In order to determine the sentiment polarity of Hinglish text written in Roman script, we experimented with different combinations of feature selection methods and a host of classifiers using term frequency-inverse document frequency feature representation. We carried out in total 840 experiments in order to determine the best classifiers for sentiment expressed in the news and Facebook comments written in Hinglish. We concluded that a triumvirate of term frequency-inverse document frequency-based feature representation, gain ratio based feature selection, and Radial Basis Function Neural Network as the best combination to classify sentiment expressed in the Hinglish text.
Vikram ThakurR. SahuSomya Omer
Harpreet KaurVeenu MangatNidhi Krail
Abhishek GuptaAbinash MishraU. Srinivasulu Reddy
H. S. Seshagiri RaoJagdish Chandra MenariaSatyendra Singh Chouhan
Pragya DwivediAshwini Kumar Verma