Election Exit Poll Prediction and U.S.A Presidential Speech Analysis using Machine Learning

Overview

Machine_Learning

Election Exit Poll Prediction and U.S.A Presidential Speech Analysis using Machine Learning

This project is based on 2 case-studies: Vote Prediction and Text Analysis. The first project is to predict which party a citizen is going to vote for on the basis of their age and according to the answers given by the citizens to the questions asked in a survey conducted. The second project is based on the analysis of the inaugural U.S.A. Presidential speeches. One has to draw inferences based on the analysis done on these speeches.

Skills and Tools

Text Mining Analytics, Support Vector Machine - K Nearest Neighbour - Naive Bayes, Ensemble Techniques, Logistic Regression - Linear Discriminant Analysis

Owner
Avnika Mehta
Avnika Mehta
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