Method for Customer Review Category Based MKL-SVM
Abstract
Website accumulates a large number of customer reviews for goods and website services. Support vector machine (SVM) is an effective text categorization method, it has strong generalization ability and high classification accuracy which can be used to track and manage customer reviews. But SVM has some weaknesses which slow training convergence speed and difficult to raise the classification accuracy. The paper use heterogeneous kernel functions which have different characteristics to resolve the problem of SVM weak generalization ability to learn and improve the SVM classification accuracy. Through classify customer reviews, online shopping websites resolve issues of critical analysis about mass customers reviews and effectively improve website service standard.
Key words: Customer Review; Text Categorization; SVM; Multiple Kernel Learning
Keywords
DOI: http://dx.doi.org/10.3968/j.mse.1913035X20120601.2850
Refbacks
- There are currently no refbacks.
Copyright (c)
Reminder
- How to do online submission to another Journal?
- If you have already registered in Journal A, then how can you submit another article to Journal B? It takes two steps to make it happen:
1. Register yourself in Journal B as an Author
- Find the journal you want to submit to in CATEGORIES, click on “VIEW JOURNAL”, “Online Submissions”, “GO TO LOGIN” and “Edit My Profile”. Check “Author” on the “Edit Profile” page, then “Save”.
2. Submission
- Go to “User Home”, and click on “Author” under the name of Journal B. You may start a New Submission by clicking on “CLICK HERE”.
We only use three mailboxes as follows to deal with issues about paper acceptance, payment and submission of electronic versions of our journals to databases:
[email protected]; [email protected]; [email protected]
Articles published in Management Science and Engineering are licensed under Creative Commons Attribution 4.0 (CC-BY).
MANAGEMENT SCIENCE AND ENGINEERING Editorial Office
Address:1055 Rue Lucien-L'Allier, Unit #772, Montreal, QC H3G 3C4, Canada.
Telephone: 1-514-558 6138
Http://www.cscanada.net Http://www.cscanada.org
Copyright © 2010 Canadian Research & Development Centre of Sciences and Cultures