PERSONALITY PREDICTION USING MACHINE LEARNING AND DJANGO
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Abstract
Personality can be defined as a set of characteristics which makes a person unique. The study of personality is of central importance in psychology. There are various conventional ways of assessing one’s personality which either costs too much of manual efforts or cannot be done in real time. To solve these problems, this research aims to measure the Big-Five personality from a set of questions. The user is asked to answer a set of few questions and according to the questions answered by the user the personality of the user is predicted using logistic regression model.
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