Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Information Theory: Review and Mutual Information
Graph Chatbot
Related lectures (29)
Data Compression: Entropy Definition
Explores data compression through entropy definition, types, and practical examples, illustrating its role in efficient information storage and transmission.
Lecture: Shannon
Covers the basics of information theory, focusing on Shannon's setting and channel transmission.
Probability and Statistics: Fundamental Theorems
Explores fundamental theorems in probability and statistics, joint probability laws, and marginal distributions.
Mutual Information in Biological Data
Explores mutual information in biological data, emphasizing its role in quantifying statistical dependence and analyzing protein sequences.
Introduction to Inference
Covers the basics of probability theory, random variables, joint probability, and inference.
Random Walks and Moran Model in Population Genetics
Explores random walks, Moran model, bacterial chemotaxis, entropy, information theory, and coevolving sites in proteins.
Entropy and Mutual Information
On entropy and mutual information explores quantifying information in data science through probability distributions.
Random Variables and Expected Value
Introduces random variables, probability distributions, and expected values through practical examples.
Probability and Statistics: Independence and Conditional Probability
Explores independence and conditional probability in probability and statistics, with examples illustrating the concepts and practical applications.
Previous
Page 2 of 2
Next