2020
DOI: 10.4018/ijoris.2020100102
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Negation Handling in Machine Learning-Based Sentiment Classification for Colloquial Arabic

Abstract: One crucial aspect of sentiment analysis is negation handling, where the occurrence of negation can flip the sentiment of a review and negatively affects the machine learning-based sentiment classification. The role of negation in Arabic sentiment analysis has been explored only to a limited extent, especially for colloquial Arabic. In this paper, the authors address the negation problem in colloquial Arabic sentiment classification using the machine learning approach. To this end, they propose a simple rule-b… Show more

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Cited by 8 publications
(12 citation statements)
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“…For F1-F7 in sentiment-based features, we adopted the publicly available resources introduced [40] which contain 3400 labeled sentimental words and 580 sentiment-carrying compound phrases. Negation is also considered in this study; we employed the rule-based algorithm presented [41] to extract F10-F12 in linguistic-based features. The algorithm detects negation words such as ‫ال(‬ ‫مو،‬ ‫)مش،‬ and then tags the opinionated words that might be affected within a predefined window length of words.…”
Section: Feature Extractionmentioning
confidence: 99%
“…For F1-F7 in sentiment-based features, we adopted the publicly available resources introduced [40] which contain 3400 labeled sentimental words and 580 sentiment-carrying compound phrases. Negation is also considered in this study; we employed the rule-based algorithm presented [41] to extract F10-F12 in linguistic-based features. The algorithm detects negation words such as ‫ال(‬ ‫مو،‬ ‫)مش،‬ and then tags the opinionated words that might be affected within a predefined window length of words.…”
Section: Feature Extractionmentioning
confidence: 99%
“…Negation words can be used to identify the scope of negation, and the sentiment of the base phrases within the scope of negation can be reversed [8] [9]. SVM, NB, and K-NN classifiers reported better improvement on the results after applying the exceptional negation algorithm [10] there are three baseline models, the first is baseline in which the simple uni-gram model is used without considering the negation problem. Secondly, a uni-gram model which consider a negation scope of five words that directly follow a negation term, where, each term within the scope will be tagged with the negation mark.…”
Section: 3negation Handlingmentioning
confidence: 99%
“…Secondly, a uni-gram model which consider a negation scope of five words that directly follow a negation term, where, each term within the scope will be tagged with the negation mark. The last one, is a uni-gram model for an inclusive negation scope that includes all the words that follow a negation term until the end of the sentence, where, each term within the scope will be tagged with the negation mark [10].…”
Section: 3negation Handlingmentioning
confidence: 99%
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“…As a result, detecting negation is critical for SA systems development and refinement and will increase classifier accuracy. Still, it is, at the same time, a significant conceptual and technical challenge (Hussein et al, 2018;Al-Harbi, 2020;Eremyan et al, 2021). This led to an interest in the research problem of automatic negation detection.…”
Section: Introductionmentioning
confidence: 99%