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ladies and gentlemen welcome to the kdi
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school World Bank monthly webinar series
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my name is yanji Kim from the kdi school
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of public policy and management and I
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will saler MC for today's
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webinar before we get started please
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note that today's webinar will be
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recorded for knowledge sharing
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purposes the recording will also be
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uploaded later to the kdi school's
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official YouTube
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channel this webinar is our joint
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venture with the world Bank where
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experts from the bank will share their
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recent findings with the school
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Community we hope you gain exclusive
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insights into The Cutting Edge research
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by the bank and have time to reflect on
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possible
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applications during the presentation
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please keep your microphone muted if you
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have any questions or comments please
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wait for the Q&A session or leave your
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messages in the
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chat now I'm pleased to introd U today's
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distinguished speaker Mr RF
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CH he is an economist in the economic
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policy division of the prosperity unit
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at the World Bank group his expertise
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includes microeconomic modeling fiscal
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policy and analyzing the macroeconomic
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and fiscal impacts of climate
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change since joining the bank in
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2018 he has held concerting roles
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contributing to macroeconomic and fiscal
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policy analysis in
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India he holds a master's degree in
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quantitative economics from the Indian
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Statistical Institute and bachelor's
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degree in economics from H Raj College
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Delhi
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University everyone please join me in
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welcoming Mr rishab
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chower Mr chower please share your
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slides when you're ready to
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begin thank you for the introduction and
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having me here very good morning to
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everyone I'll share my slides
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with please let me know whenever you can
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see the
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slides um I hope you can see the slides
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by now yeah we can see the a s okay
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thank you so
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uh so this uh work today I'm going to
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present uh has been co-authored with my
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colleagues zilia and France uh as the
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title suggest taxing for growth
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revisiting the 15%
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threshold uh in this uh paper uh we
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revisit this relationship between
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Taxation and growth and extend the
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analysis to inclusive growth when I say
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revisit it means we are building on the
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existing work that has been there around
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uh exploring this
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relationship so I'll uh structure my
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presentation in U four broad parts I'll
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first start with the motivation around
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this paper why we did this there's a
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world Bank corporate
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scorecard and we did some uh event study
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analysis uh before proceeding with more
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rigorous approaches uh then I will move
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on to uh discussing the modeling uh work
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done behind this paper which explores
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the relationship between inclusive
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growth and
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Taxation eventually I'll cover the last
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section where I'll explore uh the
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possible channels which explains the
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relationship we
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observe so the first part uh the World
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Bank corporate score card well it's an
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uh accountability mechanism where uh the
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World Bank tracks its uh progress on
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development
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priorities our president recently
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reduced the size of the previous score
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cards that has been there to one single
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scorecard and uh not just that uh we
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have earlier about 150 indicators now we
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just have 22 indicators broadly covering
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our development priorities on um poverty
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climate change uh inclusive
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growth um and finally uh on this uh we
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have moved from uh more like
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harmonization of these results
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indicators with other multilateral
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institutions which was one of the G20
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priority
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uh and uh now just to give you another
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context within this uh
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scorecard uh domestic Revenue
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mobilization Still Remains uh one of the
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components and domestic Revenue
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mobilization is of course the country's
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capability to mobilize revenues
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domestically U raise fiscal revenues
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domestically uh well there are three uh
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elements broadly I would say first is uh
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what are the vision indicators and then
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what are the result indicators and
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what's the narrative around those
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results so giving a very quick
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overview uh we start with looking at the
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high level measurements of uh
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development progress uh move on to some
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aggregate results of uh interventions
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and finally uh some narrative stories
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around how those reforms were
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implemented so uh within the this uh DRM
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agenda I will specifically point out the
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indicators how we track progress is uh
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looking at the country's progress in
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passing the tax to revenue 15% threshold
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which uh we are going to revisit in this
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paper and then of course looking at how
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uh the low uh collection countries U
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with the World Bank is helping increase
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their revenue how they address their tax
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Equity systems and lastly on the stories
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we look at how the bank supported
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reforms help in this uh help these
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countries improve revenues and improve
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other
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outcomes this was a broad summary of the
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corporate scorecard in a nutshell we
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look at uh the countries with weak
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Revenue capacities and see how the banks
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reforms have helped them and improve
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their development
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outcomes now uh uh moving to another uh
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before moving to the modeling approach
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we do another m exercise behind this
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paper which where we try to look at uh
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the relationship between tax to GDP and
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economic growth or development outcome
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using an event
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study so what is the objective the
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objective here is very clear we want to
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see whether that increase in the tax to
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GDP ratio of a country preceded a
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country's transition to a higher income
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group so when countries moving from
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lower income to lower upper middle
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income or upper middle to high income do
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these countries observe an increase in
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tax or GDP ratio prior to those
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transition
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dates we use the World Bank income group
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classification data from 1987 to
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2021 uh a broad um stats some broad
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stats are presented on the right side we
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see that when countries move from low
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income to lower middle income we have
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about 53 countries in this sample period
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likewise 67 when they move from lower
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middle to upper middle and when they
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move from upper middle to high we have
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about 41 such
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cases however there are limitations on
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the tax to GDP rati not every country
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during the time of transition had this
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data available at least in public uh
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domain so this reduces our sample size
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so you can see about
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27 uh countries have data when they move
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from low to Low Middle income so we were
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able to only track those in the event
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study
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and uh another thing maybe I can put
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some context to the numbers so low
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income class recent number suggest has a
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classification of about
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$1,145 gni per capita by uh Atlas
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method and uh for Middle income the cut
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off is like uh you cross 1145 and
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between $145 to
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$4,500 for upper middle income group the
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income range is 4500 to 14,000 and
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higher income is above that threshold
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this is the recent one but it has
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increased over time of course adjusting
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for inflation and other
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factors now uh coming to this uh chart
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where we present findings from our event
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study the leftmost chart looks at the
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tax to GDP
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ratios of the countries which were
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transitioning from different income
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groups and what we find is that in the
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first stack
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when countries transition from lower to
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lower middle income category at the time
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of transition their average tax to GDP
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ratio was about
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15% and the median which is sky blue
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color is about
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13% similarly we see that the tax to GDP
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ratio from when countries transition
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from Low Middle to Upper Middle was
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about 23 and correspondingly it was 25%
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for transition from upper middle to high
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income group so we find that no
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will 15% number when countries are
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transitioning from this low to lower
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middle income group so there's something
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about that threshold that just a
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motivation and in the right side chart
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what we look at is we zoom in our focus
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on those countries transitioning from
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lower income to lower middle income
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category what we see is that t denotes
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here on the xaxis the period of
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transition
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and the solid Orange Line denotes the
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median tax to GDP ratio the dash line
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denotes the interquartile range of those
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countries so what we see is that 10
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years prior to the transition the median
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ratio was 9% and it increased to almost
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133% at the time of transition so the an
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increase of about
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4% which is interesting that uh
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countries have increased their tax
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capacity now this can be because of that
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they were growing better and better
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growth outcomes imply better tax revenue
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collection their base was expanding they
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have more efficient tax systems
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Administration it could also mean the
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other way around that you have higher
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tax to GDP ratio means that you
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are able to do more redistribution in
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the economy reduce inequality and do
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more uh growth oriented expenditures to
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support growth so there relationship can
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work either way so far we have just
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established a more of a correlation kind
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of framework not any caus about the
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relationship between Taxation and growth
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and what we have observed is that around
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uh the transition uh date the tax to GDP
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ratio average around
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15% there are just some country examples
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because so far I reported main median uh
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now I just show some country examples
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starting uh the top left one is Georgia
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where the tax to GDP ratio increased
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from 7.3 to 14 uh in the 10 years
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preceding this uh income transition from
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low to lower middle income uh group
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likewise in codia it increased from 8 to
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14.6 in India 8.9 to
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11.9 uh in maldiv 7.7 to 12.8 so you see
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broadly the number is of course not
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exactly 15 but there's a range uh around
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that number that we see the increase
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happened
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um and uh so this ends the event study
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we have learned some lessons from the
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event study that uh tax to DDP ratio
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increased 3 to 4 percentage points prior
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to the income
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transition well it just motivates the
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idea that uh there's something that
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matters for growth that increase
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maybe now we'll revisit this
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relationship from a more technical
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perspective to establish uh causality
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and uh I will start with some motivation
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uh again looking at some correlations uh
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on the entire data set between tax to
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GDP ratio and measures of growth so the
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first thing I look at is on the leftmost
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chart is whether the tax to GDP ratio
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today is correlated with 10e ahead
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growth rate GDP growth rate
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normal we don't really observe any
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strong POS relationship as you can see
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in the leftmost chart but uh well the
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red line is a predicted polinomial uh
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fractional polinomial fit where we do
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see that at least in the very initial
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phases there is an increase and then of
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course relationship is flat so there's
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no such relationship that is coming
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out now on the right chart I do the same
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uh scatter but instead of growth I look
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at Prosperity Gap Prosperity Gap is
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coming from this create all paper which
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is published by World Bank authors so
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Prosperity Gap is a indicator which is
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measuring how by how many times your
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income uh of all the persons in an
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economy must be multiplied by a certain
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Factor so that you reach this $25 per
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day income now that $25 per day is
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coming from the fact that it is observed
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at uh when the countryes transition from
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uh upper middle income to high income
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status so it's a
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factor uh the lower factor means you are
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better off the higher means that you
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need to do more to improve the incomes
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and have shared prosperity in the
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economy so higher uh factor is a bad
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outcome uh it means higher inequality
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kind
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of now what we see is that countries
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with higher taxation to GDP ratio have
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lower factor which means uh 10 year
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ahead uh growth is more inclusive when
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you have higher tax or GDP ratios again
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these are
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correlations but there is some
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motivation that there is in relationship
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and we can explore further by our
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empirical
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approach okay so this is our empirical
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model now let's go step by
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step the left hand side of this equation
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denotes the change in the Y variable Y
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is our either growth rate or why is why
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can be seen seen as a GDP measure or
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Prosperity Gap measure and when we look
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at the difference of course in
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logarithmic terms it becomes a growth
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rate so yct denotes the value of
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variable Y in for Country C in time
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period t+ J and given our objective is
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long-term growth impacts we look at J is
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10 and 15 years old in our paper we look
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how far A little bit far in
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time and then we are saying that this
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outcome variable depends
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on whether your taxation tax to GDP
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ratio which is tax of a country C in
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time period T tax CT exceeds a threshold
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camama so we are saying that if your tax
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to GDP ratio exceeds the scamma then
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your growth or the outcome variable
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which you are interested in on the left
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hand side that is higher by an amount
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beta 1 for those countries and time
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periods when your tax to GDP ratio is
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higher than this threshold
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level and then there are other factors
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as we point out we have tax to DDP
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itself which is capturing that higher
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taxation is associated with higher
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growth the beta 3 coefficient you see
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here is capturing that we also control
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for a bunch of other factors which are
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in
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xct X will include factors like uh other
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Revenue sources debt to GDP ratio
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investment to GDP ratio population
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growth and then we have certain Capac C
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which denotes country specific
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characteristics uh and Capa which you
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know time fixed effects for instance in
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certain period there were a crisis we
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want to control for the fact that uh the
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relationship is not affected by those
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specific time
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periods and then the first is's a error
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term around your
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estimates but here the challenge is that
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we don't know gamma to estimate this
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beta 1 we need to know what threshold
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are we putting in the model but before I
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go there I would like to illustrate this
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uh impact in a diagram
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so here it's a hypothetical illustration
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on the x-axis we have tax to GDP
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ratio on the y axis we have uh the
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outcome variable of interest which is
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let's say
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growth the blue line
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is for those countries which are it is
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for the country when it is below the
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threshold and so this is just like a one
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country example and then Red Line
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denotes the outcome when it is above the
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threshold hypothetically we just assume
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here that let's say the threshold is
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15% so what we are expecting we are
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expecting that this outcome variable
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will jump around this 15% threshold so
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this beta 1 is where you will see that
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impact this is the interpretation of
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beta 1 you expect a jump around that
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threshold which is captured by beta 1
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but we don't know the threshold so what
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we are going to do is as I mentioned in
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the previous slide we will do a grid
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search we will run this model for
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different different values of gamma
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between 7 to 30% of
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GDP and sub increase it by a marginal
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amount let's say 0.12% of GDP and look
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at the values of beta 1 this beta 1 AC
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for different values of those uh tax to
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GDP ratio and eventually we we will see
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where this value is
00:19:01
maximized that is where we will observe
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that the threshold has the maximum
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effect
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so in this
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Slide the left hand chart is precisely
00:19:13
doing that what we see is that tax to
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DDP ratio is on the x- axis on the y-
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axis we have cumulative growth rate so
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that's why you see the numbers are
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higher because it's a 10-year growth
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rate uh
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cumulative and uh what you see is
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that the the beta one which is capturing
00:19:35
this cumulative growth rate it takes a
00:19:37
maximum value somewhere closer to
00:19:41
133% first and foremost point to note is
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that beta 1 here is positive and
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statistically significant which is shown
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by this shaded band of 90% confidence
00:19:53
interval which means that the effect is
00:19:57
there there is a change there is a jump
00:19:59
but where that jump is maximum now we
00:20:02
search that
00:20:04
point which appears to be closer to 13%
00:20:06
in our uh
00:20:08
chart similarly our goal is due to the
00:20:12
similar analysis for Prosperity Gap but
00:20:16
with prosperity Gap the interpretation
00:20:18
is the opposite because higher
00:20:19
Prosperity Gap would mean that you are
00:20:23
you need to there's more inequality you
00:20:25
need to multiply your incomes by larger
00:20:27
factor to reach that 25 $5 threshold
00:20:31
so here we are interested in minimizing
00:20:34
that beta 1
00:20:36
coefficient that's why in the right
00:20:38
chart what we observe is that the
00:20:40
minimum value of that beta 1 over this
00:20:44
range is achieved again around 133%
00:20:48
threshold now here I have presented and
00:20:51
another thing uh I would like to mention
00:20:53
before that it is statistically
00:20:54
significant the negative number so the
00:20:57
impact is still there there is a decline
00:20:59
in the prosperity Gap indicator around
00:21:02
that
00:21:03
threshold so here I presented the case
00:21:06
for 10 year ahead growth rates and 10
00:21:09
year ahead Prosperity Gap in the
00:21:11
original paper we do have this uh 15
00:21:15
years ahead as well and the range is
00:21:17
broadly the same 12 to 14% for the
00:21:19
threshold for both the
00:21:24
cases now in this slide
00:21:30
we are doing some predictions based on
00:21:32
our model so our goal is to look at
00:21:36
whether when countries move from the
00:21:38
lower growth rate uh lower tax GDP ratio
00:21:42
of let's say 7% to 15% the threshold
00:21:46
which we are vouching for to the what's
00:21:49
the predicted Inc predicted value of the
00:21:51
cumulative roow three so the left track
00:21:54
clearly shows that there is a higher
00:21:58
growth when you have a higher tax DDP
00:22:00
ratio and this is predicted value from
00:22:02
the model where we control for other
00:22:04
factors as
00:22:06
well the orange whiskers are showing the
00:22:09
90% confidence interval around that
00:22:12
growth likewise in the right hand chart
00:22:15
we see that if we look at Prosperity Gap
00:22:17
as an indicator we see that Prosperity
00:22:20
Gap is lower when your tax to DDP ratio
00:22:22
increases from 7 to 15 percentage
00:22:25
points so the impact are visible even in
00:22:29
a more sophisticated model than just
00:22:32
Scatter
00:22:35
Plots so so far I have touched upon the
00:22:39
motivation of
00:22:42
why uh firstly why it matters and the
00:22:45
corporate scorecard the event study and
00:22:48
eventually I moved on to a empirical
00:22:50
model where we established the fact that
00:22:53
tax to GDP ratio indeed
00:22:56
U uh is relevant for explaining higher
00:23:00
growth patterns and the threshold was
00:23:03
broadly observed around 133% not exactly
00:23:06
15 but
00:23:07
13 and that is true for both the cases
00:23:10
for uh GDP growth and for inclusive
00:23:13
growth measure which is captured through
00:23:14
Prosperity
00:23:15
Gap in the next section we will explore
00:23:19
what explains this increase like why
00:23:22
does a higher tax would mean higher
00:23:24
growth or lower
00:23:25
Prosperity so now using our similar
00:23:28
model we are going to explore some
00:23:30
channels well using conventional
00:23:32
knowledge we know that uh some channels
00:23:35
obviously that might appear to our mind
00:23:37
is that these countries which have
00:23:39
higher taxation revenues they are they
00:23:41
are able to better spend on health and
00:23:44
education which is crucial for growth
00:23:47
particularly in low-income
00:23:49
countries also these countries with
00:23:51
higher taxation might be able to
00:23:53
redistribute those revenu so there is
00:23:56
this progressivity aspect I'll explain
00:23:58
this definition as I go
00:24:00
ahead likewise uh these countries where
00:24:04
higher tax revenues are collected you
00:24:07
can probably have lower volatility in
00:24:09
your government spending patterns
00:24:10
because you're not really influenced
00:24:13
when the shocks hit the economy and
00:24:14
hence you are able to better stabilize
00:24:16
the economy
00:24:18
so uh you are likely to take some
00:24:20
counter cyclical policy measures which
00:24:22
will improve your ability to respond to
00:24:25
shocks and hence improve the growth
00:24:27
outcomes
00:24:29
so these are possible channels which we
00:24:31
have explored in this
00:24:33
paper uh let's start with health and
00:24:37
education so in the leftmost
00:24:41
chart we plot tax to GDP
00:24:44
ratio and average future health and
00:24:47
education spending as a percentage of
00:24:50
GDP now these scatters are slightly not
00:24:53
not the same as previously shown like
00:24:56
it's not just a simple country year
00:24:58
scatter but what we are doing is we
00:25:01
create bins
00:25:03
so we have this tax to DDP ratio
00:25:07
associated with one particular range uh
00:25:09
in a very small vicinity let's say 0 to
00:25:11
2% we take the average of all those
00:25:15
countries in that range average of
00:25:16
health and education spending of all
00:25:18
those countries in that range and plot
00:25:20
that this makes the visualization
00:25:22
relatively uh
00:25:25
simpler so what we see is that again as
00:25:28
your tax to GDP ratios are rising You
00:25:30
observe an increase in health and
00:25:32
education
00:25:34
spending and there's no threshold L such
00:25:36
it keeps on increasing you have more and
00:25:38
more fiscal space you're spending
00:25:41
more and we see likewise that uh when we
00:25:44
do this with a model controlling for
00:25:47
fact other factors the predicted values
00:25:49
are increasing although there is some
00:25:51
tapering of when we do this model
00:25:52
approach that the increase is not that
00:25:54
large like from 7 to 15 the increase was
00:25:56
large then it is moderating so there are
00:25:59
limits of course to the public health
00:26:00
and education
00:26:02
spending and there is literature which
00:26:05
suggests that uh and there are growth
00:26:08
models which suggest health and
00:26:09
education spending particularly are
00:26:10
relevant for human capital development
00:26:12
and hence they have positive impact on
00:26:14
growth of course in some cases there are
00:26:17
uh mixed
00:26:18
findings but broadly this growth Theory
00:26:21
will suggest that there are positive
00:26:23
effects on
00:26:24
growth and that's why we believe higher
00:26:27
taxation would increase a country's
00:26:30
fiscal space
00:26:31
to increase those critical spendings and
00:26:35
hence growth effects is
00:26:38
materialized now coming to the next
00:26:40
Channel progressive taxation so uh some
00:26:44
of you may already be aware of this
00:26:46
concept but just touching uh very
00:26:49
briefly so a progressive tax is the one
00:26:52
where this average tax burden will
00:26:55
increase as your income will go up now
00:26:57
it is not that simple that higher income
00:27:00
will of course have that higher taxation
00:27:04
because just because their income is
00:27:06
higher and they'll pay a larger
00:27:07
proportion it's not just that the tax
00:27:10
rate itself has to be higher so when you
00:27:14
make the higher income individual pay a
00:27:16
higher tax rate as you can see in the
00:27:18
left uh in the right uh chart where this
00:27:21
example is
00:27:23
presented so we see that as your income
00:27:25
is going up the tax rates are increasing
00:27:27
now this makes the system more
00:27:30
Progressive the definition might be very
00:27:32
obvious for some of you but just thought
00:27:34
to start with
00:27:38
this now why does it matter so likewise
00:27:44
using the similar Bend scatter plot we
00:27:47
show that as the direct
00:27:50
taxation in the economy increases the
00:27:53
proportion of direct
00:27:55
taxation You observe that the pro in the
00:27:58
leftmost chart the Y AIS is prosperity
00:28:01
Gap this Factor Prosperity Gap it is
00:28:04
declining which means when you have
00:28:06
higher direct
00:28:08
taxation you do observe that your
00:28:11
inequality is
00:28:15
lower now we test this in again the
00:28:19
similar model setup and do the
00:28:21
prediction controlling for other
00:28:23
variables we do observe that somewhere
00:28:26
around 15% this effect is there now 50%
00:28:29
is this Direct Tax to
00:28:31
GDP U share of direct taxes in total
00:28:35
taxes it's not the tax to GDP ratio so
00:28:39
uh it's different than the previously
00:28:41
explained Concepts so what we see is
00:28:43
that you have higher proportion of
00:28:46
direct
00:28:47
taxes um as high as
00:28:49
50% then you are going to see likely the
00:28:52
progressive impacts
00:28:54
of uh your tax system
00:28:58
which means a reduced poverty uh
00:29:00
Prosperity gap which is capturing the
00:29:02
inclusive
00:29:03
growth now also we observed of course
00:29:06
that higher taxation was associated with
00:29:08
higher Direct Tax shares now that is why
00:29:11
we believe that that is one channel
00:29:13
through which we see the prosperity Gap
00:29:16
and is declining and we observe more
00:29:18
inclusive
00:29:22
growth next Chanel is volatility now
00:29:26
firstly the why and how well there is
00:29:29
literature which suggests that higher
00:29:31
volatility can negatively impact
00:29:35
growth uh there are two aspects here one
00:29:38
is of course we look at government
00:29:40
spending volatility and the economic
00:29:43
volatility the volatility and growth
00:29:44
rate itself well government spending is
00:29:47
a component of total GDP so higher
00:29:49
spending uh volatility would mean higher
00:29:52
growth
00:29:54
volatility but not just that even the
00:29:57
growth volatility itself can have a
00:29:59
negative impact on
00:30:00
growth well some literature suggest that
00:30:03
there could be some planning error by
00:30:05
the firms because you are living in a
00:30:07
more uncertain environment and
00:30:08
uncertainty can lead to lower
00:30:11
investments in the economy and hence
00:30:14
influence future
00:30:18
growth again for government spending uh
00:30:22
these economies uh with lower revenues
00:30:26
are premises that they will likely have
00:30:28
more volatile spending which will leave
00:30:31
them with lesser opportunity to borrow
00:30:35
undermining their ability to stabilize
00:30:37
the business cycle and implement the
00:30:38
counter cyclical policy measures when
00:30:40
they are needed particularly in low
00:30:42
growth time periods or volatile physes
00:30:44
of the business
00:30:45
[Music]
00:30:47
cycle so that's clear that there we
00:30:50
expect at least some impact through our
00:30:53
literature survey and theoretical
00:30:56
knowledge but how do we measure this
00:30:59
volatility we have so far used all the
00:31:02
annual taxation data but now to measure
00:31:04
volatility we use quarterly data on GDP
00:31:07
growth and government consumption in
00:31:09
real terms there seasonality we adjust
00:31:12
for the seasonal
00:31:14
factors then we look at the 10 year
00:31:17
ahead standard deviation of this quarter
00:31:19
on quarter growth rate in GDP and
00:31:23
government
00:31:25
consumption well 10 year ahead is just
00:31:27
to
00:31:28
make sure that we are not looking at any
00:31:30
contemporaneous relation and Taxation
00:31:32
today matters for future this also
00:31:34
partially takes care of the endogenity
00:31:37
issue where you might say that it's the
00:31:39
other way around that lower volatility
00:31:41
means better taxation but that's why we
00:31:44
look at 10 year ahead so that tax the
00:31:47
relationship goes from taxation to
00:31:50
volatility and then of course now we
00:31:52
want to link it to our annual data set
00:31:54
so we just pick up the first quarter
00:31:55
measure and Link call it
00:31:58
representative for that particular year
00:32:00
because it's 10 year ahead so it covers
00:32:02
the future
00:32:04
periods so then uh this is our measure
00:32:07
of volatility for both spending and
00:32:09
government spending and economic
00:32:11
growth again similar bin plot suggests
00:32:14
that in the left most chart higher
00:32:17
taxation is associated with lower
00:32:19
government spending volatility you see
00:32:22
it's declining and here one can roughly
00:32:25
say that okay up to 20% the impact is
00:32:27
sharp it's sharp Decline and then onward
00:32:29
starts to taper
00:32:31
off in the rightmost start we present
00:32:35
this commment consumption volatility
00:32:37
against
00:32:39
um future GDP volatility and see of
00:32:42
course GDP was uh government consumption
00:32:45
is a component of GDP and there's a
00:32:47
positive association between the two
00:32:49
higher consumption volatility means that
00:32:51
higher GDP
00:32:55
volatility so there is some evidence
00:32:57
that spending and output volatility with
00:33:00
drop with higher tax revenue collections
00:33:03
which is what we show now in a empirical
00:33:06
model so use in the left most chart uses
00:33:09
the same threshold model which we
00:33:12
presented in the very uh beginning slide
00:33:16
in the third
00:33:17
section what we see is that the beta 1
00:33:20
Co now we have replaced the Y by
00:33:23
volatility measure instead of growth and
00:33:25
inclusive growth what we see is that the
00:33:27
volatil
00:33:28
is minimized at around again 133% of
00:33:33
GDP so and it is negative and
00:33:36
statistically significant impact because
00:33:39
those orange whiskers are 90% confidence
00:33:44
interval so again there's motivation
00:33:46
that this channel is at work around that
00:33:50
threshold and the right hand chart is
00:33:52
just doing the same approach we look at
00:33:54
the predicted values and we see that as
00:33:56
you come uh closer to 13% there's a
00:33:59
sharp decline but afterwards it's more
00:34:02
or less flat the volatility is more or
00:34:04
less the same for countries in that
00:34:06
higher bracket but as you approach 13
00:34:08
then there's a
00:34:13
decline okay so this is my last slide on
00:34:18
conclusion what we have donear today is
00:34:21
that from this paper that government uh
00:34:25
when they collect lower tax revenues we
00:34:27
have observed that there are negative
00:34:29
impacts on growth because their capacity
00:34:32
to invest in critical infrastructure can
00:34:34
be limited which we have not really
00:34:36
shown on the infrastructure side but at
00:34:38
least on the development side human uh
00:34:41
Capital spending and U public spending
00:34:44
on health and education we have seen
00:34:46
that that is that can be limited because
00:34:48
of tax uh capacity constraints which can
00:34:52
further exacerbate inequality and lead
00:34:54
to overreliance on debt now higher debt
00:34:57
can also of course have negative impacts
00:34:58
on growth uh if you just keep on relying
00:35:01
on debt and not on your uh domestic uh
00:35:04
capacity the cut off we found uh is in
00:35:08
the range of 12 to
00:35:09
14% well now you will say why then 15%
00:35:13
the reason is we observed that about
00:35:15
there is the the standard deviation of
00:35:18
this tax to GDP ratio was again around
00:35:20
2% over our sample so then when we are
00:35:25
setting targets for the country it's
00:35:26
better to be at 15% because there'll be
00:35:28
volatility around that number so you aim
00:35:31
a slightly higher
00:35:33
number and that stabilizes your future
00:35:36
fiscal outcomes and the channels we have
00:35:38
explored it was through more productive
00:35:40
spending more Progressive taxes less
00:35:44
spending and output
00:35:45
volatility which further translated into
00:35:49
better growth
00:35:51
outs thank you