Improving unsupervised neural aspect extraction for online discussions using out-of-domain classification

Author:

Alekseev Anton1,Tutubalina Elena12,Malykh Valentin3,Nikolenko Sergey41

Affiliation:

1. Samsung-PDMI Joint AI Center, Steklov Mathematical Institute at St. Petersburg, 27 Fontanka, St. Petersburg, Russia

2. Kazan Federal University, 18 Kremlyovskaya Street, Kazan, Russia

3. Moscow Institute of Physics and Technology, 9 Institutskiy per., Dolgoprudny, Moscow Region, Russia

4. National Research University Higher School of Economics, St. Petersburg, Russia

Abstract

 Deep learning architectures based on self-attention have recently achieved and surpassed state of the art results in the task of unsupervised aspect extraction and topic modeling. While models such as neural attention-based aspect extraction (ABAE) have been successfully applied to user-generated texts, they are less coherent when applied to traditional data sources such as news articles and newsgroup documents. In this work, we introduce a simple approach based on sentence filtering in order to improve topical aspects learned from newsgroups-based content without modifying the basic mechanism of ABAE. We train a probabilistic classifier to distinguish between out-of-domain texts (outer dataset) and in-domain texts (target dataset). Then, during data preparation we filter out sentences that have a low probability of being in-domain and train the neural model on the remaining sentences. The positive effect of sentence filtering on topic coherence is demonstrated in comparison to aspect extraction models trained on unfiltered texts.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference9 articles.

1. Blei D.M. and McAuliffe J.D. , Supervised Topic Models, Advances in Neural Information Processing Systems 22 (2007).

2. Latent Dirichlet allocation;Blei;Journal of Machine Learning Research,2003

3. Hierarchical Relational Models for Document Networks;Chang;Annals of Applied Statistics,2010

4. Finding Scientific Topics;Griffiths;Proceedings of the National Academy of Sciences,2004

5. Overcoming catastrophic forgetting in neural networks;Kirkpatrick;Proceedings of the National Academy of Sciences,2017

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