What is Data Mining

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https://www.youtube.com/watch?v=81bm2OsEzbg

Resumen

TLDRData mining is an analytical process that identifies meaningful patterns and relationships in raw data, aiding in predicting future developments. It combines statistics, artificial intelligence, and machine learning to provide accurate insights. The data mining process involves six steps: outlining business goals, understanding data sources, preparing data (ETL), analyzing data, reviewing results, and deployment for decision-making. Successful companies like Groupon, Domino's Pizza, and Air France KLM demonstrate the effective use of data mining to enhance customer experiences and improve business performance.

Para llevar

  • 🔍 Data mining identifies trends in raw data.
  • 🧠 It combines statistics, AI, and machine learning.
  • 📈 There are six key steps in the data mining process.
  • 🎯 Outlining business goals is crucial for success.
  • 📊 Data preparation uses Extract, Transform, Load (ETL).
  • 🔎 Analyzing data reveals patterns and relationships.
  • 📝 Reviewing results helps confirm predictions.
  • 🚀 Deployment implements insights into decision-making.
  • 💼 Successful companies utilize data mining effectively.
  • 👍 Data mining can transform chaotic data into actionable insights.

Cronología

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    Data mining is an analytical process that extracts meaningful insights from raw data, primarily used to identify trends and relationships for future predictions. It combines statistics, artificial intelligence, and machine learning to analyze extensive datasets efficiently, revealing structures such as anomalies and correlations. The modern data mining process has evolved significantly from its early roots, enabling businesses to make informed decisions and mitigate risks by harnessing complex data effectively.

Mapa mental

Vídeo de preguntas y respuestas

  • What is data mining?

    Data mining is an analytical process to identify meaningful trends and relationships in raw data to predict future data.

  • What are the key disciplines in data mining?

    The key disciplines are statistics, artificial intelligence, and machine learning.

  • What are the typical steps in data mining?

    The steps include outlining business goals, understanding data sources, preparing data (ETL), analyzing data, reviewing results, and deployment.

  • How does data mining benefit companies?

    Data mining helps companies anticipate problems, plan for the future, make informed decisions, and seize opportunities for growth.

  • Can data mining lead to inaccurate insights?

    Yes, improper data management can lead to inaccurate insights and forecasts.

  • What are some examples of companies using data mining?

    Examples include Groupon, Domino's Pizza, and Air France KLM.

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  • 00:00:01
    data mining definition steps and examples
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    when we think of mining it sounds manual tedious and unfruitful after all hacking
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    away at rock walls for hours on end hoping to find gold sounds like a lot of
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    work for a very small reward data mining however is quite the
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    opposite without doing much work at all you can reap rewarding results and
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    that's because we have modern solutions which do it for us
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    these softwares can sift through terabytes of data within minutes giving
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    us valuable insights on patterns journeys and relationships in the data
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    so let's dive into what data mining is how we do it and what its examples look like
  • 00:00:44
    what is data mining
  • 00:00:48
    data mining is a type of analytical process that identifies meaningful
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    trends and relationships in raw data and this is typically done to predict future data
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    data mining tools come through large
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    batches of data sets with a broad range of techniques to discover data
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    structures such as anomalies patterns journeys or correlations
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    though it's been around since the early 1900s the data mining we no one used
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    today comprises three disciplines the first is statistics the numerical
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    study of data relationships secondly we have artificial intelligence
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    the extreme human-like intelligence displayed by softwares or machines
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    last but not least we have machine learning the ability to automatically
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    learn from data with minimal human assistance
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    these three elements have helped us move beyond the tedious processes of the past
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    and onto simpler and better automations for today's complex data sets and in
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    fact the more complex and varied these data sets are the more relevant and
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    accurate their insights and predictions will be
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    by unveiling structures within the data data mining yields insights that can
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    then be used by companies to anticipate and solve problems plan for the future
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    make informed decisions mitigate risks and seize new opportunities to grow
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    what are the steps in data mining the overall process of data mining generally
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    consists of six steps the first is outlining your business goals
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    it's important to understand your business objectives thoroughly this will
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    allow you to set the most accurate project parameters which include the
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    time frame and scope of data the primary objective of the project in question and
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    the criteria needed to identify it as a success
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    the second is understanding your data sources with a deeper grasp of your
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    project parameters you'll be able to better understand which platforms and
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    databases are necessary to solve the problem whether it's from your crm or
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    excel spreadsheets identify which sources best provide the relevant data needed
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    the third is preparing your data in this
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    step you'll use the etl process which stands for extract transform and load
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    this prepares the data ensuring it is collected from the various selected
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    sources cleaned and then collated the fourth is analyzing your data at this
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    stage the organized data is fed into an advanced application and different
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    machine learning algorithms get to work on identifying relationships and
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    patterns that can help inform decisions and forecast future trends
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    this application organizes the elements of data also known as your data points
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    and standardize how they relate to one another
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    for instance one data model for a shoe product is composed of other elements
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    such as color size method of purchase location of purchase and buyer
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    personality type the fifth is reviewing the results here you'll be able to
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    determine if and how well the results and insights delivered by the model can
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    assist in confirming your predictions answering your questions and achieving
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    the business objective and last we have deployment or implementation
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    upon completion of the data mining project the results should then be made
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    available to the decision makers via a report they can then choose how they
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    would like to implement that information to achieve the business objective in
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    other words this is where insights from your analyses are applied in real life
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    without proper data management and preparation data mining could actually
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    work against you by providing inaccurate insights and forecasts however when done
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    correctly and by the right software data mining enables you to sift through
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    chaotic data noise to understand what is relevant from there you can make active
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    use of that information in your decision making
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    data mining examples people tend to assume that more data
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    equals more knowledge but in reality it's less about how much data you have
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    and more about what you do with it let's look at a few examples of
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    companies who've understood this and have done it right through their smart
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    use of data mining they've come out on top the first is groupon
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    groupon aligned their marketing efforts such as ad campaigns and sales offerings
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    closer to their customers preferences by data mining one terabyte of customer
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    data this data was analyzed in real time and helped the organization identify
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    emerging trends within their audience segment that they could leverage on
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    the second is domino's pizza from its point of sale systems and 26 supply
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    chain centers to text messages social media and amazon echo domino's pizza
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    improved its marketing and sales performances while enabling one-to-one
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    buying experiences across various touch points
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    it accomplished this by data mining 85 000 structured and unstructured data sources
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    third is air france klm
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    air france klm created personalized travel experiences for their flyers
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    through building a 360 degree customer view based on data mined from trip
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    searches bookings flight operations website cookies and social media
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    Gauthier Le Masne their chief customer data officer said each and every traveler is
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    unique with our big data and talent platform we offer made just for me
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    travel experiences from purchase planning through the post flight stage
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    well there you have it now that you understand what data mining is how it
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    works and the critical role it plays in transforming the way companies do things
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    perhaps you can start thinking about how these tools can empower you and your teams too
Etiquetas
  • data mining
  • analytics
  • statistics
  • artificial intelligence
  • machine learning
  • data analysis
  • business strategy
  • customer insights
  • ETL
  • big data