Advanced Topics in Machine Learning, Notre Dame , Nicholas Zabaras
Generative Bayesian Models for Discrete Data
(continued) and Summarizing Posterior Distributions and Bayesian Model Selection
Feature selection using mutual information; Classifying documents using bag of words; Summarizing Posterior Distributions, MAP Estimation, Reparametrization, Credible Intervals, HPD Intervals; Bayesian Inference for a Difference in Proportions Model Selection and Cross Validation, Bayesian Model Selection, Bayesian Occam’s Razor, Marginal Likelihood, Evidence Approximation; Bayes Fac
8 views
30
5
9 years ago 00:57:23 101
Advanced Topics in Programming Languages: The Java Memory Model
6 years ago 01:28:34 13
Reinforcement Learning 8: Advanced Topics in Deep RL
7 years ago 00:14:09 160
24. Advanced EKGs - Miscellaneous EP Topics
5 years ago 00:42:11 0
Advanced Kotlin
5 years ago 01:56:22 8
Advanced Topics in Machine Learning, Notre Dame , Nicholas Zabaras
5 years ago 01:18:28 4
Introduction to Deep Learning - 12 Advanced Deep Learning Topics
5 years ago 00:25:08 1
English Listening Comprehension: 30 Advanced Topics | Part 2
13 years ago 00:58:35 22
Google I/O 2012 - Making Good Apps Great: More Advanced Topics for Expert Android Developers
5 years ago 00:25:04 0
English Listening Comprehension: 30 Advanced Topics | Part 1
5 years ago 00:38:03 16
Dragonfly Daily 19 Advanced Topics with Deep Learning in Dragonfly (2020)
13 years ago 01:01:12 12
Google I/O 2011: Android Protips: Advanced Topics for Expert Android App Developers