cshalizi + jordan.michael_i. 7
[1111.4226] Joint Modeling of Multiple Related Time Series via the Beta Process
november 2011 by cshalizi
"We propose a Bayesian nonparametric approach to the problem of jointly modeling multiple related time series. Our approach is based on the discovery of a set of latent, shared dynamical behaviors. Using a beta process prior, the size of the set and the sharing pattern are both inferred from data. We develop efficient Markov chain Monte Carlo methods based on the Indian buffet process representation of the predictive distribution of the beta process, without relying on a truncated model. In particular, our approach uses the sum-product algorithm to efficiently compute Metropolis-Hastings acceptance probabilities, and explores new dynamical behaviors via birth and death proposals. We examine the benefits of our proposed feature-based model on several synthetic datasets, and also demonstrate promising results on unsupervised segmentation of visual motion capture data."
to:NB
heard_the_talk
time_series
statistics
machine_learning
nonparametrics
fox.emily
jordan.michael_i.
november 2011 by cshalizi
Statistics 210B: Theoretical Statistics
april 2009 by cshalizi
Michael Jordan's theoretical statistics class. Needless to say, I approve.
statistics
learning_theory
empirical_processes
machine_learning
asymptotics
estimation
via:mreid
jordan.michael_i.
april 2009 by cshalizi
related tags
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