scholarly journals Approaches to Cross-Domain Sentiment Analysis: A Systematic Literature Review

IEEE Access ◽  
2017 ◽  
Vol 5 ◽  
pp. 16173-16192 ◽  
Author(s):  
Tareq Al-Moslmi ◽  
Nazlia Omar ◽  
Salwani Abdullah ◽  
Mohammed Albared
Author(s):  
Karen Mite-Baidal ◽  
Carlota Delgado-Vera ◽  
Evelyn Solís-Avilés ◽  
Ana Herrera Espinoza ◽  
Jenny Ortiz-Zambrano ◽  
...  

IEEE Access ◽  
2021 ◽  
pp. 1-1
Author(s):  
Ruba Obiedat ◽  
Duha Al-Darras ◽  
Esra Alzaghoul ◽  
Osama Harfoushi

Author(s):  
Nancy Kansal ◽  
Lipika Goel ◽  
Sonam Gupta

Sentiment analysis is the field of NLP which analyzes the sentiments of text written by users on online sites in the form of reviews. These reviews may be either in the form of a word, sentence, document, or ratings. These reviews are used as datasets when applied to train a classifier. These datasets are applied in the annotated form with the positive, negative or neutral labels as an input to train the classifier. This trained classifier is used to test other reviews, either in the same or different domains to know like or dislike of the user for the related field. Various researches have been done in single and cross domain sentiment analysis. The new methods proposed are overcoming the previous ones but according to this survey, no methods best suit the proposed work. In this article, the authors review the methods and techniques that are given by various researchers in cross domain sentiment analysis and how those are compared with the pre-existing methods for the related work.


2021 ◽  
Vol 29 (1) ◽  
Author(s):  
Nur Atiqah Sia Abdullah ◽  
Nur Ida Aniza Rusli

With the explosive growth of social media, the online community can freely express their opinions without disclosing their identities. People with hidden agendas can easily post fake opinions to discredit target products, services, politicians, or organizations. With these big data, monitoring opinions and distilling their sentiments remain a formidable task because of the proliferation of diverse sites with a large volume of opinions that are portrayed in multilingual. Therefore, this paper aims to provide a systematic literature review on multilingual sentiment analysis, which summarises the common languages supported in multilingual sentiment analysis, pre-processing techniques, existing sentiment analysis approaches, and evaluation models that have been used for multilingual sentiment analysis. By following the systematic literature review, the findings revealed, most of the models supported two languages, and English is seen as the most used language in sentiment analysis studies. None of the reviewed literature has catered the combination of languages for English, Chinese, Malay, and Hindi language on multilingual sentiment analysis. The common pre-processing techniques for the multilingual domain are tokenization, normalization, capitalization, N-gram, and machine translation. Meanwhile, the sentiment analysis classification techniques for multilingual sentiment are hybrid sentiment analysis, which includes localized language analysis, unsupervised topic clustering, and then followed by multilingual sentiment analysis. In terms of evaluation, most of the studies used precision, recall, and accuracy as the benchmark for the results.


2021 ◽  
Vol ahead-of-print (ahead-of-print) ◽  
Author(s):  
Sonia Osorio Angel ◽  
Adriana Peña Pérez Negrón ◽  
Aurora Espinoza-Valdez

PurposeMost studies on Sentiment Analysis are performed in English. However, as the third most spoken language on the Internet, Sentiment Analysis for Spanish presents its challenges from a semantic and syntactic point of view. This review presents a scope of the recent advances in this area.Design/methodology/approachA systematic literature review on Sentiment Analysis for the Spanish language was conducted on recognized databases by the research community.FindingsResults show classification systems through three different approaches: Lexicon based, Machine Learning based and hybrid approaches. Additionally, different linguistic resources as Lexicon or corpus explicitly developed for the Spanish language were found.Originality/valueThis study provides academics and professionals, a review of advances in Sentiment Analysis for the Spanish language. Most reviews on Sentiment Analysis are for English, and other languages such as Chinese or Arabic, but no updated reviews were found for Spanish.


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