In this course, we will expand our exploration of statistical inference techniques by focusing on the science and art of fitting statistical models to data. We will build on the concepts presented in the Statistical Inference course (Course 2) to emphasize the importance of connecting research questions to our data analysis methods. We will also focus on various modeling objectives, including making inference about relationships between variables and generating predictions for future observations.

Fitting Statistical Models to Data with Python

Fitting Statistical Models to Data with Python
This course is part of Statistics with Python Specialization



Instructors: Brenda Gunderson
Access provided by Reveille Foundation
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What you'll learn
Deepen your understanding of statistical inference techniques by mastering the art of fitting statistical models to data.
Connect research questions with data analysis methods, emphasizing objectives, relationships between variables, and making predictions.
Explore various statistical modeling techniques like linear regression, logistic regression, and Bayesian inference using real data sets.
Work through hands-on case studies in Python with libraries like Statsmodels, Pandas, and Seaborn in the Jupyter Notebook environment.
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Reviewed on Jun 19, 2020
The course was wonderful however, sometimes I felt that a little bit more details could be provided when python code was being explained for week 2.
Reviewed on Mar 11, 2019
The course is actually pretty good, however the mix between basic subjects (like univariate linear regression) and relatively advanced topics (marginal models) may discourage some students.
Reviewed on Jun 15, 2021
It was very technical and a lot of the mathematics behind the models were not explained properly. The codes were also not explained properly
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