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Related lectures (28)
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Entropy Bounds: Conditional Entropy Theorems
Explores entropy bounds, conditional entropy theorems, and the chain rule for entropies, illustrating their application through examples.
Curie-Weiss Model
Delves into the Curie-Weiss model, exploring its theoretical foundations and practical applications in different scenarios.
Cavity and variational methods
Explores the cavity method for the run-fill Ising model and the variational method for approximating the Boltzmann distribution.
Information Theory Basics
Introduces information theory basics, including entropy, independence, and binary entropy function.
Source Coding Theorem
Explores the Source Coding Theorem, entropy, Huffman coding, and conditioning's impact on entropy reduction.
Protein-Ligand Interactions: Importance and Affinity
Explores the importance of protein-ligand interactions, focusing on binding affinities and energetic landscapes, with implications for drug development and specificity.
Information Theory: Entropy and Information Processing
Explores entropy in information theory and its role in data processing and probability distributions.
Conditional Entropy: Review and Definitions
Covers conditional entropy, weather conditions, function entropy, and the chain rule.
Random Variables: Expected Value
Covers advanced probability concepts, including random variables and expected value calculation.
Temperature, Pressure, Chemical Potential
Explores temperature, pressure, and chemical potential in simple systems, along with reversible processes and powers.
Conditional Entropy and Data Compression Techniques
Discusses conditional entropy and its role in data compression techniques.
Variance: Definition, Examples, and Theorems
Covers the definition of variance, examples, theorems, and applications in probability theory.
Random Variables: Basics and Examples
Explains random variables, distributions, and Bernoulli trials with coin flip examples.
Protein Residue Coevolution Analysis
Delves into analyzing residue coevolution in protein families to capture native contacts and predict spatial proximity and protein interactions.
Probability: Bernoulli Trials
Explores Bernoulli trials, independent trials, and the binomial distribution.
Advanced Probability: Probability Trees and Conditional Probabilities
Explores probability trees, conditional probabilities, Bernoulli trials, binomial distribution, and Bayes' Theorem.
Advanced Probability: Expected Value
Explores expected value in probability theory, including dice rolls and Bernoulli trials.
Random Walks and Moran Model in Population Genetics
Explores random walks, Moran model, bacterial chemotaxis, entropy, information theory, and coevolving sites in proteins.
Advanced Probabilities: Random Variables & Expected Values
Explores advanced probabilities, random variables, and expected values, with practical examples and quizzes to reinforce learning.
Variance and Independent Random Variables
Covers variance, independent random variables, and their properties, including examples and proofs.
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