Learning Gaussian Graphical Models via Multiplicative Weights

02/20/2020
by   Anamay Chaturvedi, et al.
0

Graphical model selection in Markov random fields is a fundamental problem in statistics and machine learning. Two particularly prominent models, the Ising model and Gaussian model, have largely developed in parallel using different (though often related) techniques, and several practical algorithms with rigorous sample complexity bounds have been established for each. In this paper, we adapt a recently proposed algorithm of Klivans and Meka (FOCS, 2017), based on the method of multiplicative weight updates, from the Ising model to the Gaussian model, via non-trivial modifications to both the algorithm and its analysis. The algorithm enjoys a sample complexity bound that is qualitatively similar to others in the literature, has a low runtime O(mp^2) in the case of m samples and p nodes, and can trivially be implemented in an online manner.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/25/2022

Optimal estimation of Gaussian DAG models

We study the optimal sample complexity of learning a Gaussian directed a...
research
11/06/2019

Multi-Item Mechanisms without Item-Independence: Learnability via Robustness

We study the sample complexity of learning revenue-optimal multi-item au...
research
12/17/2013

Markov Network Structure Learning via Ensemble-of-Forests Models

Real world systems typically feature a variety of different dependency t...
research
10/20/2014

Scalable Parallel Factorizations of SDD Matrices and Efficient Sampling for Gaussian Graphical Models

Motivated by a sampling problem basic to computational statistical infer...
research
02/08/2012

Greedy Learning of Markov Network Structure

We propose a new yet natural algorithm for learning the graph structure ...
research
06/10/2018

Stationary Geometric Graphical Model Selection

We consider the problem of model selection in Gaussian Markov fields in ...
research
12/05/2019

On the Sample Complexity of Learning Sum-Product Networks

Sum-Product Networks (SPNs) can be regarded as a form of deep graphical ...

Please sign up or login with your details

Forgot password? Click here to reset