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SAC
2010
ACM

Feature selection for ordinal regression

13 years 11 months ago
Feature selection for ordinal regression
Ordinal regression (also known as ordinal classification) is a supervised learning task that consists of automatically determining the implied rating of a data item on a fixed, discrete rating scale. This problem is receiving increasing attention from the sentiment analysis and opinion mining community, due to the importance of automatically rating increasing amounts of product review data in digital form. As in other supervised learning tasks such as (binary or multiclass) classification, feature selection is needed in order to improve efficiency and to avoid overfitting. However, while feature selection has been extensively studied for other classification tasks, is has not for ordinal regression. In this paper we present four novel feature selection metrics that we have specifically devised for ordinal regression, and test them on two datasets of product review data. Keywords Ordinal regression, ordinal classification, feature selection, product reviews
Stefano Baccianella, Andrea Esuli, Fabrizio Sebast
Added 17 May 2010
Updated 17 May 2010
Type Conference
Year 2010
Where SAC
Authors Stefano Baccianella, Andrea Esuli, Fabrizio Sebastiani
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