Abstract

We address the problem of analyzing multiple related opinions in a text. For instance, in a restaurant review such opinions may include food, ambience and service. We formulate this task as a multiple aspect ranking problem, where the goal is to produce a set of numerical scores, one for each aspect. We present an algorithm that jointly learns ranking models for individual aspects by modeling the dependencies between assigned ranks. This algorithm guides the prediction of individual rankers by analyzing meta-relations between opinions, such as agreement and contrast. We prove that our agreementbased joint model is more expressive than individual ranking models. Our empirical results further confirm the strength of the model: the algorithm provides significant improvement over both individual rankers and a state-of-the-art joint ranking model. 1

Keywords

Ranking (information retrieval)Computer scienceSet (abstract data type)Task (project management)Learning to rankMachine learningArtificial intelligenceAlgorithmTheoretical computer science

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Publication Info

Year
2007
Type
article
Pages
300-307
Citations
316
Access
Closed

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Benjamin Snyder, Regina Barzilay (2007). Multiple Aspect Ranking Using the Good Grief Algorithm. , 300-307.