Download PDFOpen PDF in browserSurvey Paper on Sentiment Analysis: Techniques and ChallengesEasyChair Preprint 23894 pages•Date: January 15, 2020AbstractProcess of finding out extracting experiences and emotions from the given dataset is called Sentiment Analysis. It is also called as Opinion Mining. By using sentiment analysis on the reviews the customer and enterprises can big a major change in the decision making process. There are different methodologies while making a sentiment analyzer. Data acquisition, data preprocessing and training with an algorithm are some of the steps involved in the methodology. There are various challenges while making a sentiment analyzer. In this paper we are going to survey different steps and techniques on sentiment analysis. We also studied previous work and tried to compare them and find out a better way to increase the accuracy and efficiency of a model. Naive Bayes and Support Vector Machine are mostly used classifiers. Further we discuss various challenges in sentiment analysis. Keyphrases: Lexicon based approach, Naïve Bayes (NB), Opinion Mining, Sentiment Analysis, Support Vector Machine (SVM), machine learning, product reviews
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