Probability for Data Science & Machine Learning
Offered By: Derek Banas via YouTube
Course Description
Overview
Syllabus
Intro.
Probability Definitions.
Union.
Intersection.
Complement.
Conditional Probability.
Contingency Table.
Addition Rule.
Joint Probability.
Dependent vs. Independent.
Independent Events.
Mutually Exclusive Events.
Venn Diagrams.
Tree Diagrams.
Total Probability.
Bayes' Theorem.
Combinatorics.
Permutations.
Combinations.
Poker Probabilities.
Which to use?.
Variations.
Types of Variables.
Discrete Uniform Distribution.
Probability Mass.
Variance.
Relative Frequency Histogram.
Cumulative Distribution.
Expected Value.
Standard Deviation.
Normal Distribution.
Z Score.
Negative Z Score.
Reverse Z Score.
Confidence Intervals.
Binomial Probability.
Poisson Distribution.
Geometric Probability.
Central Limit Theorem.
Negative Binomial Probability.
Which to use?.
Negative Binomial Formula.
Hypergeometric Distribution.
Continuous Probability.
Continuous Probability Formula.
Exponential Distribution.
Exponential Formulas.
Taught by
Derek Banas
Related Courses
Data AnalysisJohns Hopkins University via Coursera Computing for Data Analysis
Johns Hopkins University via Coursera Scientific Computing
University of Washington via Coursera Introduction to Data Science
University of Washington via Coursera Web Intelligence and Big Data
Indian Institute of Technology Delhi via Coursera