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Performance comparison of support vector machine (SVM) with linear kernel and polynomial kernel for multiclass sentiment analysis on twitter
2021
Ilkom Jurnal Ilmiah
Sentiment analysis is a technique to extract information of one's perception, called sentiment, on an issue or event. This study employs sentiment analysis to classify society's response on covid-19 virus posted at twitter into 4 polars, namely happy, sad, angry, and scared. Classification technique used is support vector machine (SVM) method which compares the classification performance figure of 2 linear kernel functions, linear and polynomial. There were 400 tweet data used where each
doi:10.33096/ilkom.v13i2.851.168-174
fatcat:vgw3sa3lczha7pufdh3f27nlsy