The main focus of this particular episode covers the material in Chapter 4 of my new forthcoming book titled “Statistical Machine Learning: A unified framework.” Chapter 4 is titled “Linear Algebra for Machine Learning.
Many important and widely used machine learning algorithms may be interpreted as linear machines and this chapter shows how to use linear algebra to analyze and design such machines. In addition, these same techniques are fundamentally important for the development of techniques for the analysis and design of nonlinear machines.
This podcast provides a brief overview of Linear Algebra for Machine Learning for the general public as well as information
for students and instructors regarding the contents of Chapter 4
of Statistical Machine Learning. For more details, check out: www.statisticalmachinelearning.com
LM101-086: Ch8: How to Learn the Probability of Infinitely Many Outcomes
LM101-085:Ch7:How to Guarantee your Batch Learning Algorithm Converges
LM101-084: Ch6: How to Analyze the Behavior of Smart Dynamical Systems
LM101-083: Ch5: How to Use Calculus to Design Learning Machines
LM101-081: Ch3: How to Define Machine Learning (or at Least Try)
LM101-080: Ch2: How to Represent Knowledge using Set Theory
LM101-079: Ch1: How to View Learning as Risk Minimization
LM101-078: Ch0: How to Become a Machine Learning Expert
LM101-077: How to Choose the Best Model using BIC
LM101-076: How to Choose the Best Model using AIC and GAIC
LM101-075: Can computers think? A Mathematician's Response (remix)
LM101-074: How to Represent Knowledge using Logical Rules (remix)
LM101-073: How to Build a Machine that Learns to Play Checkers (remix)
LM101-072: Welcome to the Big Artificial Intelligence Magic Show! (Remix of LM101-001 and LM101-002)
LM101-071: How to Model Common Sense Knowledge using First-Order Logic and Markov Logic Nets
LM101-070: How to Identify Facial Emotion Expressions in Images Using Stochastic Neighborhood Embedding
LM101-069: What Happened at the 2017 Neural Information Processing Systems Conference?
LM101-068: How to Design Automatic Learning Rate Selection for Gradient Descent Type Machine Learning Algorithms
LM101-067: How to use Expectation Maximization to Learn Constraint Satisfaction Solutions (Rerun)
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