Data Science: Inference and Modeling
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Data Science: Inference and Modeling

Highlights

Statistical inference and modeling are indispensable for analyzing data affected by chance, and thus essential for data scientists. In this course, you will learn these key concepts through a motivating case study on election forecasting.

This course will show you how inference and modeling can be applied to develop the statistical approaches that make polls an effective tool and we'll show you how to do this using R. You will learn concepts necessary to define estimates and margins of errors and learn how you can use these to make predictions relatively well and also provide an estimate of the precision of your forecast.

Once you learn this you will be able to understand two concepts that are ubiquitous in data science: confidence intervals, and p-values. Then, to understand statements about the probability of a candidate winning, you will learn about Bayesian modeling. Finally, at the end of the course, we will put it all together to recreate a simplified version of an election forecast model and apply it to the 2016 election.

About the Course Provider

edX was established by Harvard and MIT to provide the highest quality education and serves as a leading worldwide online learning platform.

Course by

  • self
    Self paced
  • dueration
    Duration 12
  • domain
    Domain IT & Computer Science
  • subs
    Monthly Subscription
    Course is included in
    1. Professional @ AED 149 + VAT
    2. Starter @ AED 99 + VAT
  • fee
    Buy Now AED 379.99 + VAT
  • language
    Language English