Date of Publication :20th May 2021
Abstract: Social networks are rising too quickly now. Every single person is on social media and talking to each other. All this data could be used to evaluate and forecast the very actions of a person so that human psychology could be encapsulated in a machine. What a person thinks or what is in its mind can be now predicted by using sentiment analysis techniques. Various researchers have worked on sentiment analysis techniques and predicted the output parameters like emotions, stress, etc. The objective of this paper is to analyze the human behavior in terms of his anxiety, mood, mental issues hence, state of mind. In this paper we have done the comprehensive analysis of various such techniques and the databases used by them.
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