jacobkrit / Statistics-for-Bioengineering-Sciences

A repository from engineers to engineers for Statistics and Probability Theory

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Statistics-for-Bioengineering-Sciences

A repository from engineers to engineers for Statistics and Probability Theory

Every engineer and scientist should have in their toolbox a course module on Statistics and Probability theory. There is extensive literature with well-written information and theory. However, a condensed library that combines the concepts of statistics and probability with a Python-focused implementation is not clearly available. We provide all the Python applications required for Statistics and Probability in this repository.

Syllabus

  • Chapter 1 - The Sample and Its Properties (descriptive statistics)
  • Chapter 2 - Probability, Conditional Probability, and Bayes’ Rule
  • Chapter 3 - Sensitivity, Specificity, and Relatives
  • Chapter 4 - Random Variables (and common distributions)
  • Chapter 5 - Normal Distribution
  • Chapter 6 - Point and Interval Estimators
  • Chapter 7 - Bayesian Approach to Inference
  • Chapter 8 - Testing Statistical Hypotheses
  • Chapter 9 - Two Samples
  • Chapter 10 - ANOVA and Elements of Experimental Design
  • Chapter 11 - Distribution-Free Tests
  • Chapter 12 - Goodness-of-Fit Tests
  • Chapter 13 - Models for Tables
  • Chapter 14 - Correlation

References

  • Brani Vidakovic - Statistics for Bioengineering Sciences
  • Benjamin Yakir - Introduction to Statistical Thinking
  • Christian Heumann & Michael Schomaker Shalabh - Introduction to Statistics and Data Analysis

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A repository from engineers to engineers for Statistics and Probability Theory

License:MIT License


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