Information Engineering and Applications pp 1715-1721 | Cite as
Opinion Mining by Generating the Summaries of Users’ Reviews
Conference paper
Abstract
Opinion mining is to categorize the opinion-oriented documents into positive or negative document sets according to their polarity. Previous approaches may cause the problem of high dimensionality of the vector. This paper we applied the technique of generating the summaries of the users’ reviews to solve this problem. After making a comparison with previous approaches, we prove that the use of this method can reduce the number of vector dimensions, consistent with the performance of previous approaches.
Keywords
Support Vector Machine Opinion Mining Vector Dimension Baseline Method Document Representation
These keywords were added by machine and not by the authors. This process is experimental and the keywords may be updated as the learning algorithm improves.
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