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Probability Distributions
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Total time needed:
~52 minutes
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Learning Objectives
Understand the concept of probability distributions
Potential Use Cases
Mathematical foundations for Deep Learning
Target Audience
BEGINNER
Deep Learning practitioners new to Mathematical / Statistics foundations
Go through the following
annotated items
in order
:
VIDEO
1. Probability
What is probability?
How can we compare probabilities?
30 minutes
BOOK_CHAPTER
2. Probability Distribution
How to describe probability distribution of discrete variables?
How to describe probability distribution of continuous variables?
10 minutes
VIDEO
3. Introduction to Probability Distributions
What is a probability?
What's mean?
What's variance?
What's the difference between sample and population?
7 minutes
ARTICLE
4. Common Probability Distributions
What is a Bernoulli Distribution?
What is a Multinoulli Distribution?
What is a Gaussian Distribution?
What are the Exponential and Laplace Distributions?
What are the Dirac Distribution and Empirical Distribution?
15 minutes
BOOK_CHAPTER
5. Common Probability Distributions
What are discrete and continuous distributions?
What is the Bernoulli distribution?
What is a binomial distribution?
What is a geometric distribution?
10 minutes
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