Prakash RokadeAruna KumariB PangL LeeS VaithyanathanPeter TurneyM HuB LiuP ChaovalitL ZhouT O'keefeI KoprinskaA PakP ParoubekEfthymios KoulompisTheresa WilsonJohanna MooreHassan SaifYulan HeHarith AlaniM JensenL JorbaE AnduizaA KothariW PatelAbinash TripathyAnkit AgrawalSantanu KumarVarsha SahayakVijaya SheteApashabi Pathan
Business decisions for any service or product depend on sentiments by the people. The mood of people towards any event, service and product are expressed in sentiments. The text sentiment contains different linguistic features of sentence. A sentiment sentence also contains other features which are playing a vital role in deciding the polarity of sentiments.The features like duplication of sentiment, unknown emotics may change the polarity of sentiment.If features selection is proper one can extract better sentiments for decision making. A directed preprocessing will feed filtered input to any machine learning approach. Support vector machine proved as a good tool of machine learning for better sentiment analysis.Better use of parts os speech (POS) folled by guided preprocessing and evaluation will provide less errorus polarity of sentiments
D. V. Nagarjuna DeviChinta Kishore KumarS. Naga Prasad
Farhan Setiyo DarusmanAmalia Anjani ArifiyantiSeftin Fitri Ana Wati
Aditya GuptaPriyanka TyagiTanupriya ChoudhuryMohammad Shamoon