MedLDA: A General Framework of Maximum Margin Supervised Topic Models

12/30/2009
by   Jun Zhu, et al.
0

Supervised topic models utilize document's side information for discovering predictive low dimensional representations of documents. Existing models apply the likelihood-based estimation. In this paper, we present a general framework of max-margin supervised topic models for both continuous and categorical response variables. Our approach, the maximum entropy discrimination latent Dirichlet allocation (MedLDA), utilizes the max-margin principle to train supervised topic models and estimate predictive topic representations that are arguably more suitable for prediction tasks. The general principle of MedLDA can be applied to perform joint max-margin learning and maximum likelihood estimation for arbitrary topic models, directed or undirected, and supervised or unsupervised, when the supervised side information is available. We develop efficient variational methods for posterior inference and parameter estimation, and demonstrate qualitatively and quantitatively the advantages of MedLDA over likelihood-based topic models on movie review and 20 Newsgroups data sets.

READ FULL TEXT
research
10/19/2012

Boltzmann Machine Learning with the Latent Maximum Entropy Principle

We present a new statistical learning paradigm for Boltzmann machines ba...
research
10/10/2013

Gibbs Max-margin Topic Models with Data Augmentation

Max-margin learning is a powerful approach to building classifiers and s...
research
10/29/2020

The Performance Analysis of Generalized Margin Maximizer (GMM) on Separable Data

Logistic models are commonly used for binary classification tasks. The s...
research
06/12/2020

Fast Maximum Likelihood Estimation and Supervised Classification for the Beta-Liouville Multinomial

The multinomial and related distributions have long been used to model c...
research
04/28/2015

Non-Gaussian Discriminative Factor Models via the Max-Margin Rank-Likelihood

We consider the problem of discriminative factor analysis for data that ...
research
04/17/2009

Exponential Family Graph Matching and Ranking

We present a method for learning max-weight matching predictors in bipar...
research
03/04/2020

Contrastive estimation reveals topic posterior information to linear models

Contrastive learning is an approach to representation learning that util...

Please sign up or login with your details

Forgot password? Click here to reset