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RETRACTED: PMI-based polarity computation for SVM-NN-based sentiment classification from user-generated reviews

P. Padmavathy (BSAR Crescent Institute of Science and Technology, Chennai, India)
S. Pakkir Mohideen (BSAR Crescent Institute of Science and Technology, Chennai, India)
Zameer Gulzar (BSAR Crescent Institute of Science and Technology, Chennai, India)

International Journal of Intelligent Unmanned Systems

ISSN: 2049-6427

Article publication date: 16 March 2021

Issue publication date: 7 January 2022

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This article was retracted on 2 May 2024.

Retraction notice

The publishers of International Journal of Intelligent Unmanned Systems wish to retract the article Padmavathy, P., Mohideen, S.P. and Gulzar, Z. (2022), “PMI-based polarity computation for SVM-NN-based sentiment classification from user-generated reviews”, International Journal of Intelligent Unmanned Systems, Vol. 10 No. 1, pp. 179-199. https://doi.org/10.1108/IJIUS-09-2020-0043

An internal investigation into a series of submissions has uncovered evidence that the peer review process was compromised. As a result of these concerns, the findings of the article cannot be relied upon. This decision has been taken in accordance with Emerald's publishing ethics and the COPE guidelines on retractions.

The authors of this paper would like to note that they do not agree with the content of this notice.

The publishers of the journal sincerely apologize to the readers.

Abstract

Purpose

The purpose of this paper is to initially perform Senti-WordNet (SWN)- and point wise mutual information (PMI)-based polarity computation and based polarity updation. When the SWN polarity and polarity mismatched, the vote flipping algorithm (VFA) is employed.

Design/methodology/approach

Recently, in domains like social media(SM), healthcare, hotel, car, product data, etc., research on sentiment analysis (SA) has massively increased. In addition, there is no approach for analyzing the positive or negative orientations of every single aspect in a document (a tweet, a review, as well as a piece of news, among others). For SA as well as polarity classification, several researchers have used SWN as a lexical resource. Nevertheless, these lexicons show lower-level performance for sentiment classification (SC) than domain-specific lexicons (DSL). Likewise, in some scenarios, the same term is utilized differently between domain and general knowledge lexicons. While concerning different domains, most words have one sentiment class in SWN, and in the annotated data set, their occurrence signifies a strong inclination with the other sentiment class. Hence, this paper chiefly concentrates on the drawbacks of adapting domain-dependent sentiment lexicon (DDSL) from a collection of labeled user reviews and domain-independent lexicon (DIL) for proposing a framework centered on the information theory that could predict the correct polarity of the words (positive, neutral and negative). The proposed work initially performs SWN- and PMI-based polarity computation and based polarity updation. When the SWN polarity and polarity mismatched, the vote flipping algorithm (VFA) is employed. Finally, the predicted polarity is inputted to the mtf-idf-based SVM-NN classifier for the SC of reviews. The outcomes are examined and contrasted to the other existing techniques to verify that the proposed work has predicted the class of the reviews more effectually for different datasets.

Findings

There is no approach for analyzing the positive or negative orientations of every single aspect in a document (a tweet, a review, as well as a piece of news, among others). For SA as well as polarity classification, several researchers have used SWN as a lexical resource. Nevertheless, these lexicons show lower-level performance for sentiment classification (SC) than domain-specific lexicons (DSL). Likewise, in some scenarios, the same term is utilized differently between domain and general knowledge lexicons. While concerning different domains, most words have one sentiment class in SWN, and in the annotated data set their occurrence signifies a strong inclination with the other sentiment class.

Originality/value

The proposed work initially performs SWN- and PMI-based polarity computation, and based polarity updation. When the SWN polarity and polarity mismatched, the vote flipping algorithm (VFA) is employed.

Keywords

Citation

Padmavathy, P., Mohideen, S.P. and Gulzar, Z. (2022), "RETRACTED: PMI-based polarity computation for SVM-NN-based sentiment classification from user-generated reviews", International Journal of Intelligent Unmanned Systems, Vol. 10 No. 1, pp. 179-199. https://doi.org/10.1108/IJIUS-09-2020-0043

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

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