The Discrete Infinite Logistic Normal Distribution

03/24/2011
by   John Paisley, et al.
0

We present the discrete infinite logistic normal distribution (DILN), a Bayesian nonparametric prior for mixed membership models. DILN is a generalization of the hierarchical Dirichlet process (HDP) that models correlation structure between the weights of the atoms at the group level. We derive a representation of DILN as a normalized collection of gamma-distributed random variables, and study its statistical properties. We consider applications to topic modeling and derive a variational inference algorithm for approximate posterior inference. We study the empirical performance of the DILN topic model on four corpora, comparing performance with the HDP and the correlated topic model (CTM). To deal with large-scale data sets, we also develop an online inference algorithm for DILN and compare with online HDP and online LDA on the Nature magazine, which contains approximately 350,000 articles.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/29/2012

Stochastic Variational Inference

We develop stochastic variational inference, a scalable algorithm for ap...
research
10/04/2014

Gamma Processes, Stick-Breaking, and Variational Inference

While most Bayesian nonparametric models in machine learning have focuse...
research
01/13/2020

Conditional Variational Inference with Adaptive Truncation for Bayesian Nonparametric Models

The scalable inference for Bayesian nonparametric models with big data i...
research
07/02/2015

Correlated Random Measures

We develop correlated random measures, random measures where the atom we...
research
05/30/2016

Spectral Methods for Correlated Topic Models

In this paper, we propose guaranteed spectral methods for learning a bro...
research
06/16/2023

A Hierarchical Bayesian Model for Deep Few-Shot Meta Learning

We propose a novel hierarchical Bayesian model for learning with a large...
research
10/09/2013

Improved Bayesian Logistic Supervised Topic Models with Data Augmentation

Supervised topic models with a logistic likelihood have two issues that ...

Please sign up or login with your details

Forgot password? Click here to reset