scispace - formally typeset
M

Michael I. Jordan

Researcher at University of California, Berkeley

Publications -  1110
Citations -  241763

Michael I. Jordan is an academic researcher from University of California, Berkeley. The author has contributed to research in topics: Computer science & Inference. The author has an hindex of 176, co-authored 1016 publications receiving 216204 citations. Previous affiliations of Michael I. Jordan include Stanford University & Princeton University.

Papers
More filters
Posted Content

Variational consensus Monte Carlo

TL;DR: The variational consensus Monte Carlo (VCMC) as discussed by the authors is a variational Bayes algorithm that optimizes over aggregation functions to obtain samples from a distribution that better approximates the target.
Journal ArticleDOI

Is Temporal Difference Learning Optimal? An Instance-Dependent Analysis

TL;DR: In this article, the authors address the problem of policy evaluation in discounted, tabular Markov decision processes and provide instance-dependent guarantees on the $\ell_\infty$-error under a generative model.
Posted Content

Communication-efficient distributed statistical learning.

TL;DR: CSL provides a communication-efficient surrogate to the global likelihood that can be used for low-dimensional estimation, high-dimensional regularized estimation and Bayesian inference, and significantly improves the computational efficiency of MCMC algorithms even in a non-distributed setting.
Proceedings Article

Variational Inference over Combinatorial Spaces

TL;DR: This work proposes a new framework that extends variational inference to a wide range of combinatorial spaces, based on a simple assumption: the existence of a tractable measure factorization, which it is shown holds in many examples.
Posted Content

Improved Sample Complexity for Stochastic Compositional Variance Reduced Gradient

TL;DR: In this article, a new stochastic compositional variance-reduced gradient algorithm with sample complexity of O((m+n) + log(1/ε ϵ + 1/επ ϵ+1/πσon + ϵ)-3 ) was proposed, where ϵ is the total number of samples.