Tackstrom and McDonald, ECIR 2011. Discovering fine-grained sentiment with latent variable structured prediction models

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Citation

O. Tackstrom and R. McDonald. 2011. Discovering fine-grained sentiment with latent variable structured prediction models. In Proceedings of ECIR-2011, pp 764–773, Dublin, Ireland.

Online Version

Discovering fine-grained sentiment with latent variable structured prediction models

Summary

This paper investigates the use of latent variable structured prediction models for fine-grained sentiment analysis in the common situation where only coarse-grained supervision is available. The authors show how sentence level sentiment labels can be effectively learned from document-level supervision using hidden conditional random fields (HCRFs). The authors show improvements over both lexicon and existing machine learning based approaches. They focus on sentence level sentiment analysis.

Method

The authors observe that there is a lot of data in the form of coarse-level annotations available on the web pertaining to consumer reviews of products, movies etc. However, fine-grained labeled data for sentiment is difficult to obtain across domains for supervised learning. Hence, the authors model finer-level information as latent variables making use of the freely available coarse level annotations, using hierarchical graphical models such as HCRFs.

Based on the observations about positive and negative reviews in documents, the authors model sentence level classifications as:

  • Correlated with the observed document label and,
  • Flexible enough to disagree when contextual evidence suggests otherwise.

Approach

They start with the supervised fine-to-coarse sentiment model described in [[RelatedPaper::McDonald et al., 2007].

Let be a document consisting of sentences, Let the document level sentiment and sentence level sentiment be denoted by

Experiments and Results

Datasets

Evaluation Metric

Results

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