Gaussian Hierarchical Latent Dirichlet Allocation: Bringing Polysemy Back

02/25/2020
by   Takahiro Yoshida, et al.
0

Topic models are widely used to discover the latent representation of a set of documents. The two canonical models are latent Dirichlet allocation, and Gaussian latent Dirichlet allocation, where the former uses multinomial distributions over words, and the latter uses multivariate Gaussian distributions over pre-trained word embedding vectors as the latent topic representations, respectively. Compared with latent Dirichlet allocation, Gaussian latent Dirichlet allocation is limited in the sense that it does not capture the polysemy of a word such as “bank.” In this paper, we show that Gaussian latent Dirichlet allocation could recover the ability to capture polysemy by introducing a hierarchical structure in the set of topics that the model can use to represent a given document. Our Gaussian hierarchical latent Dirichlet allocation significantly improves polysemy detection compared with Gaussian-based models and provides more parsimonious topic representations compared with hierarchical latent Dirichlet allocation. Our extensive quantitative experiments show that our model also achieves better topic coherence and held-out document predictive accuracy over a wide range of corpus and word embedding vectors.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/19/2020

Top2Vec: Distributed Representations of Topics

Topic modeling is used for discovering latent semantic structure, usuall...
research
08/12/2018

Augmenting word2vec with latent Dirichlet allocation within a clinical application

This paper presents three hybrid models that directly combine latent Dir...
research
02/22/2018

Learning Topic Models by Neighborhood Aggregation

Topic models are one of the most frequently used models in machine learn...
research
10/21/2011

Kernel Topic Models

Latent Dirichlet Allocation models discrete data as a mixture of discret...
research
06/20/2012

Nonparametric Bayes Pachinko Allocation

Recent advances in topic models have explored complicated structured dis...
research
01/20/2016

Hierarchical Latent Word Clustering

This paper presents a new Bayesian non-parametric model by extending the...
research
07/20/2016

An Adaptation of Topic Modeling to Sentences

Advances in topic modeling have yielded effective methods for characteri...

Please sign up or login with your details

Forgot password? Click here to reset