2019
DOI: 10.35940/ijrte.b2629.098319
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Penguin Search Optimization Based Feature Selection for Automated Opinion Mining

Abstract: Twitter sentiment analysis is a vital concept in determining the public opinions about products, services, events or personality. Analyzing the medical tweets on a specific topic can provide immense benefits in medical industry. However, the medical tweets require efficient feature selection approach to produce significantly accurate results. Penguin search optimization algorithm (PeSOA) has the ability to resolve NP-hard problems. This paper aims at developing an automated opinion mining framework by modeling… Show more

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Cited by 5 publications
(11 citation statements)
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“…The features from the Twitter dataset are extracted using NLP tools such as Word2Vec and TF-IDF, with the nouns, pronouns, and adjectives are considered as primary feature contents, whereas the adverbs and verbs provide additional information. Furthermore, the extraction of Part-of-Speech (POS) tags, function words, and content word features can improve the classification performance [60]. For identifying the cyber-bullying events, prominent feature are selected utilizing the Information Gain (GI) method, then these features subsets are fed into DEA-RNN classifier.…”
Section: Feature Extraction and Selectionmentioning
confidence: 99%
“…The features from the Twitter dataset are extracted using NLP tools such as Word2Vec and TF-IDF, with the nouns, pronouns, and adjectives are considered as primary feature contents, whereas the adverbs and verbs provide additional information. Furthermore, the extraction of Part-of-Speech (POS) tags, function words, and content word features can improve the classification performance [60]. For identifying the cyber-bullying events, prominent feature are selected utilizing the Information Gain (GI) method, then these features subsets are fed into DEA-RNN classifier.…”
Section: Feature Extraction and Selectionmentioning
confidence: 99%
“…It combines precision and recall into a single value and is particularly useful for balancing these metrics. This metric has been used in [22,33,35,39,45,48,51,55,59,60,83,92,98,101,117,132,141,149,155,162,164,167,171,[176][177][178]182,184,185] and mathematically is defined as follows:…”
Section: Classifier Metricsmentioning
confidence: 99%
“…Measures the model's ability to correctly identify all positive instances. This metric has been used in [22,33,35,55,56,60,70,85,96,98,101,102,106,117,129,132,133,141,149,162,164,171,[176][177][178]185] and mathematically is defined as follows:…”
Section: Classifier Metricsmentioning
confidence: 99%
“…NLP concepts, such as part of speech tagging, n-gram, content words, and function words have also been used to extract features from tweet data [16]. The Penguin Search Optimization (PeSOA) algorithm [16] was also used as a feature selection technique to select optimal features based on the keywords of drugs and cancer in tweet data.…”
Section: A Review Feature Selection Algorithms Used In Sentiment Analaysis For Drug Reviewsmentioning
confidence: 99%
“…NLP concepts, such as part of speech tagging, n-gram, content words, and function words have also been used to extract features from tweet data [16]. The Penguin Search Optimization (PeSOA) algorithm [16] was also used as a feature selection technique to select optimal features based on the keywords of drugs and cancer in tweet data. The K-Nearest Neighbour (KNN), Naïve Bayes (NB), and Support Vector Machine (SVM) methods were used through MATLAB simulation software to classify the tweet data.…”
Section: A Review Feature Selection Algorithms Used In Sentiment Analaysis For Drug Reviewsmentioning
confidence: 99%