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      Lexicon-enhanced sentiment analysis framework using rule-based classification scheme

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          Abstract

          With the rapid increase in social networks and blogs, the social media services are increasingly being used by online communities to share their views and experiences about a particular product, policy and event. Due to economic importance of these reviews, there is growing trend of writing user reviews to promote a product. Nowadays, users prefer online blogs and review sites to purchase products. Therefore, user reviews are considered as an important source of information in Sentiment Analysis (SA) applications for decision making. In this work, we exploit the wealth of user reviews, available through the online forums, to analyze the semantic orientation of words by categorizing them into +ive and -ive classes to identify and classify emoticons, modifiers, general-purpose and domain-specific words expressed in the public’s feedback about the products. However, the un-supervised learning approach employed in previous studies is becoming less efficient due to data sparseness, low accuracy due to non-consideration of emoticons, modifiers, and presence of domain specific words, as they may result in inaccurate classification of users’ reviews. Lexicon-enhanced sentiment analysis based on Rule-based classification scheme is an alternative approach for improving sentiment classification of users’ reviews in online communities. In addition to the sentiment terms used in general purpose sentiment analysis, we integrate emoticons, modifiers and domain specific terms to analyze the reviews posted in online communities. To test the effectiveness of the proposed method, we considered users reviews in three domains. The results obtained from different experiments demonstrate that the proposed method overcomes limitations of previous methods and the performance of the sentiment analysis is improved after considering emoticons, modifiers, negations, and domain specific terms when compared to baseline methods.

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          Most cited references20

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          Affective Computing and Sentiment Analysis

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            Incremental Support Vector Learning for Ordinal Regression.

            Support vector ordinal regression (SVOR) is a popular method to tackle ordinal regression problems. However, until now there were no effective algorithms proposed to address incremental SVOR learning due to the complicated formulations of SVOR. Recently, an interesting accurate on-line algorithm was proposed for training ν -support vector classification (ν-SVC), which can handle a quadratic formulation with a pair of equality constraints. In this paper, we first present a modified SVOR formulation based on a sum-of-margins strategy. The formulation has multiple constraints, and each constraint includes a mixture of an equality and an inequality. Then, we extend the accurate on-line ν-SVC algorithm to the modified formulation, and propose an effective incremental SVOR algorithm. The algorithm can handle a quadratic formulation with multiple constraints, where each constraint is constituted of an equality and an inequality. More importantly, it tackles the conflicts between the equality and inequality constraints. We also provide the finite convergence analysis for the algorithm. Numerical experiments on the several benchmark and real-world data sets show that the incremental algorithm can converge to the optimal solution in a finite number of steps, and is faster than the existing batch and incremental SVOR algorithms. Meanwhile, the modified formulation has better accuracy than the existing incremental SVOR algorithm, and is as accurate as the sum-of-margins based formulation of Shashua and Levin.
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              SentiHealth: creating health-related sentiment lexicon using hybrid approach

              The exponential increase in the health-related online reviews has played a pivotal role in the development of sentiment analysis systems for extracting and analyzing user-generated health reviews about a drug or medication. The existing general purpose opinion lexicons, such as SentiWordNet has a limited coverage of health-related terms, creating problems for the development of health-based sentiment analysis applications. In this work, we present a hybrid approach to create health-related domain specific lexicon for the efficient classification and scoring of health-related users’ sentiments. The proposed approach is based on the bootstrapping modal, a dataset of health reviews, and corpus-based sentiment detection and scoring. In each of the iteration, vocabulary of the lexicon is updated automatically from an initial seed cache, irrelevant words are filtered, words are declared as medical or non-medical entries, and finally sentiment class and score is assigned to each of the word. The results obtained demonstrate the efficacy of the proposed technique.
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                Author and article information

                Contributors
                Role: Editor
                Journal
                PLoS One
                PLoS ONE
                plos
                plosone
                PLoS ONE
                Public Library of Science (San Francisco, CA USA )
                1932-6203
                23 February 2017
                2017
                : 12
                : 2
                : e0171649
                Affiliations
                [1 ]Institute of Computing and Information Technology (ICIT), Gomal University, Dera Ismail Khan, Pakistan
                [2 ]Department of Computer Science, University of Science and Technology, Bannu, Pakistan
                [3 ]Faculty of Computing and Information Technology in Rabigh (FCITR), King Abdul Aziz University (KAU) Saudi Arabia
                [4 ]COMSATS Institute of Information Technology, Abbottabad, Pakistan
                Tianjin University, CHINA
                Author notes

                Competing Interests: The authors have declared that no competing interests exist.

                • Conceptualization: MZA AK.

                • Data curation: MZA MQ SA.

                • Formal analysis: MQ AK IAK.

                • Investigation: MZA MQ IAK.

                • Methodology: MZA MQ AK SA.

                • Project administration: MZA.

                • Resources: MQ IAK SA.

                • Software: MZA AK MQ IAK.

                • Supervision: SA.

                • Validation: MQ MZA IAK.

                • Visualization: MZA AK MQ.

                • Writing – original draft: MZA MQ.

                • Writing – review & editing: MZA IAK.

                Author information
                http://orcid.org/0000-0003-3320-2074
                Article
                PONE-D-16-07418
                10.1371/journal.pone.0171649
                5322980
                28231286
                1564f78c-927a-4907-9b7b-a332277e2865
                © 2017 Asghar et al

                This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

                History
                : 20 February 2016
                : 24 January 2017
                Page count
                Figures: 4, Tables: 11, Pages: 22
                Funding
                The authors received no specific funding for this work.
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