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
Discrete Random Variables: Medical Testing
Graph Chatbot
Related lectures (30)
Previous
Page 2 of 3
Next
Probability and Statistics: Independence and Conditional Probability
Explores independence and conditional probability in probability and statistics, with examples illustrating the concepts and practical applications.
Probability and Measure: Fundamentals and Applications
Covers fundamental concepts of probability theory and measure theory, including joint probabilities, random variables, and the central limit theorem.
Probability and Statistics: Fundamental Theorems
Explores fundamental theorems in probability and statistics, joint probability laws, and marginal distributions.
Elements of Statistics
Introduces key statistical concepts like probability, random variables, and correlation, with examples and explanations.
Conditional Density and Expectation
Covers conditional density, independence of random variables, expectation, and variance calculation.
Probability and Random Variables: Key Concepts Explained
Explains key concepts in probability, including conditional probability, independence, and random variables, with practical examples to illustrate their applications.
Elements of Statistics: Probability and Random Variables
Introduces key concepts in probability and random variables, covering statistics, distributions, and covariance.
Statistical Theory: Fundamentals
Covers the basics of statistical theory, including probability models, random variables, and sampling distributions.
Random Variables and Expected Value
Introduces random variables, probability distributions, and expected values through practical examples.
Probability Theory: Basics and Applications
Covers the fundamentals of probability theory, including corollaries, conditional probability, total probability theorem, and random variables.