SOTAVerified

Pen and Paper Exercises in Machine Learning

2022-06-27Code Available4· sign in to hype

Michael U. Gutmann

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

This is a collection of (mostly) pen-and-paper exercises in machine learning. The exercises are on the following topics: linear algebra, optimisation, directed graphical models, undirected graphical models, expressive power of graphical models, factor graphs and message passing, inference for hidden Markov models, model-based learning (including ICA and unnormalised models), sampling and Monte-Carlo integration, and variational inference.

Tasks

Reproductions