LGCLDec 28, 2017

Topic Compositional Neural Language Model

arXiv:1712.09783v384 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of improving language modeling by integrating topic coherence, which is incremental as it builds on existing neural topic and language models.

The authors tackled the problem of capturing both global semantic meaning and local word ordering in documents by proposing the Topic Compositional Neural Language Model (TCNLM), which outperformed pure RNN-based models and other topic-guided language models on several corpora.

We propose a Topic Compositional Neural Language Model (TCNLM), a novel method designed to simultaneously capture both the global semantic meaning and the local word ordering structure in a document. The TCNLM learns the global semantic coherence of a document via a neural topic model, and the probability of each learned latent topic is further used to build a Mixture-of-Experts (MoE) language model, where each expert (corresponding to one topic) is a recurrent neural network (RNN) that accounts for learning the local structure of a word sequence. In order to train the MoE model efficiently, a matrix factorization method is applied, by extending each weight matrix of the RNN to be an ensemble of topic-dependent weight matrices. The degree to which each member of the ensemble is used is tied to the document-dependent probability of the corresponding topics. Experimental results on several corpora show that the proposed approach outperforms both a pure RNN-based model and other topic-guided language models. Further, our model yields sensible topics, and also has the capacity to generate meaningful sentences conditioned on given topics.

Foundations

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