Opinion Analysis For Online Reviews (Paperback)

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This book provides a comprehensive introduction on opinion analysis for online reviews. It offers the newest research on opinion mining, including theories, algorithms and datasets. A new feature presentation method is highlighted for sentiment classification. Then, a three-phase framework for sentiment classification is proposed, where a set of sentiment classifiers are selected automatically to make predictions. Such predictions are integrated via ensemble learning. Finally, to solve the problem of combination explosion encountered, a greedy algorithm is devised to select the base classifiers.

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Product Description

This book provides a comprehensive introduction on opinion analysis for online reviews. It offers the newest research on opinion mining, including theories, algorithms and datasets. A new feature presentation method is highlighted for sentiment classification. Then, a three-phase framework for sentiment classification is proposed, where a set of sentiment classifiers are selected automatically to make predictions. Such predictions are integrated via ensemble learning. Finally, to solve the problem of combination explosion encountered, a greedy algorithm is devised to select the base classifiers.

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Product Details

General

Imprint

World Scientific Publishing Co Pte Ltd

Country of origin

Singapore

Series

East China Normal University Scientific Reports, 4

Release date

July 2016

Availability

Expected to ship within 12 - 17 working days

First published

2016

Authors

, ,

Dimensions

210 x 307 x 9mm (L x W x T)

Format

Paperback

Pages

128

ISBN-13

978-981-3100-44-2

Barcode

9789813100442

Categories

LSN

981-3100-44-3



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