Authors
Ryan McDonald, Kerry Hannan, Tyler Neylon, Mike Wells, Jeff Reynar
Publication date
2007/6
Conference
Proceedings of the 45th annual meeting of the association of computational linguistics
Pages
432-439
Description
In this paper we investigate a structured model for jointly classifying the sentiment of text at varying levels of granularity. Inference in the model is based on standard sequence classification techniques using constrained Viterbi to ensure consistent solutions. The primary advantage of such a model is that it allows classification decisions from one level in the text to influence decisions at another. Experiments show that this method can significantly reduce classification error relative to models trained in isolation.
Total citations
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Scholar articles
R McDonald, K Hannan, T Neylon, M Wells, J Reynar - Proceedings of the 45th annual meeting of the …, 2007