Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Anchored Correlation Explanation: Topic Modeling with Minimal Domain Knowledge

About

While generative models such as Latent Dirichlet Allocation (LDA) have proven fruitful in topic modeling, they often require detailed assumptions and careful specification of hyperparameters. Such model complexity issues only compound when trying to generalize generative models to incorporate human input. We introduce Correlation Explanation (CorEx), an alternative approach to topic modeling that does not assume an underlying generative model, and instead learns maximally informative topics through an information-theoretic framework. This framework naturally generalizes to hierarchical and semi-supervised extensions with no additional modeling assumptions. In particular, word-level domain knowledge can be flexibly incorporated within CorEx through anchor words, allowing topic separability and representation to be promoted with minimal human intervention. Across a variety of datasets, metrics, and experiments, we demonstrate that CorEx produces topics that are comparable in quality to those produced by unsupervised and semi-supervised variants of LDA.

Ryan J. Gallagher, Kyle Reing, David Kale, Greg Ver Steeg• 2016

Related benchmarks

TaskDatasetResultRank
Text ClassificationAGNews
Accuracy77.8
119
Text Classification20News
Accuracy44
101
Topic ModelingAGNews
Diversity100
14
Text ClassificationDBLP
Accuracy53
9
Topic Modeling20News
Topic Diversity100
8
Topic ModelingDBLP
Diversity100
8
Hierarchical Topic MiningarXiv
TC0.006
7
Hierarchical Topic MiningNYT
TC0.0117
7
Showing 8 of 8 rows

Other info

Follow for update