Litcius/Paper detail

Sentiment analysis on film review in Gujarati language using machine learning

Parita Shah, Priya Swaminarayan, Maitri Patel

2021International Journal of Power Electronics and Drive Systems/International Journal of Electrical and Computer Engineering30 citationsDOIOpen Access PDF

Abstract

<span>Opinion analysis is by a long shot most basic zone of characteristic language handling. It manages the portrayal of information to choose the motivation behind the wellspring of the content. The reason might be of a type of gratefulness (positive) or study (negative). This paper offers a correlation between the outcomes accomplished by applying the calculation arrangement using various classifiers for instance K-nearest neighbor and multinomial naive Bayes. These techniques are utilized to assess a significant assessment with either a positive remark or negative remark. The gathered information considered on the grounds of the extremity film datasets and an association with the results accessible proof has been created for a careful assessment. This paper investigates the word level count vectorizer and term frequency inverse document frequency (TF-IDF) influence on film sentiment analysis. We concluded that multinomial Naive Bayes (MNB) classier generate more accurate result using TF-IDF vectorizer compared to CountVectorizer, K-nearest-neighbors (KNN) classifier has the same accuracy result in case of TF-IDF and CountVectorizer.</span>

Topics & Concepts

Naive Bayes classifierComputer scienceSentiment analysistf–idfArtificial intelligencek-nearest neighbors algorithmMultinomial distributionNatural language processingSentenceWord (group theory)Multinomial logistic regressionClassifier (UML)Machine learningTerm (time)Support vector machineStatisticsMathematicsQuantum mechanicsPhysicsGeometrySentiment Analysis and Opinion MiningStock Market Forecasting MethodsData Mining and Machine Learning Applications
Sentiment analysis on film review in Gujarati language using machine learning | Litcius