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Emotion Analysis on Students Database: A Predictive Approach

N. Abirami, A. Kaveri, Dr. M. Renukadevi

Abstract


In the new era of artificial intelligence emotional analysis will be an add on feature for the existing default database programs which have been used widely. This characteristic enables the ability to analyse emotional and sentimental characteristics from the database. The main idea is to detect the emotions of the given data to predict its reaction or to do some other specified actions. Emotions can be highly grouped into 3 namely positive, negative and neutral. Using this the analyser can bring out results or predictions to the users


Keywords


Emotions, Analysis, Database, Analyser, Programs

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References


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