Multi-Level Structured Models for Document-Level Sentiment Classification

  title={Multi-Level Structured Models for Document-Level Sentiment Classification},
  author={Ainur Yessenalina and Yisong Yue and Claire Cardie},
In this paper, we investigate structured models for document-level sentiment classification. When predicting the sentiment of a subjective document (e.g., as positive or negative), it is well known that not all sentences are equally discriminative or informative. But identifying the useful sentences automatically is itself a difficult learning problem. This paper proposes a joint two-level approach for document-level sentiment classification that simultaneously extracts useful (i.e., subjective… CONTINUE READING
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