Important Feature Selection for Predicting Human Freedom Index Score using Machine Learning Algorithms

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Abstract

Human freedom index refers to the state of human freedom in various countries based their personal and economic attributes. Human freedom can help us identify nobility of citizens in a country. For an individual of a country freedom is of great value and hence it is worthy to measure. Though there are many attributes to measure the human freedom index both in personal as well as in economic factors, here we are interested to find only those features which contribute the most and are relevant to predict the outcome i.e. human freedom index score. We will go through various features engineering process like removing strongly correlated attributes, filtering method using Mutual Information (Entropy) and then use Select KBest algorithm to select top features filtered through Mutual information. These steps will help reduce the training time, increase accuracy and reduce overfitting when model is created to predict the human freedom index score which is a Machine Learning Regression problem.

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Kumari*, P., Vagolu, S. P. B., & Chandolu, S. (2020). Important Feature Selection for Predicting Human Freedom Index Score using Machine Learning Algorithms. International Journal of Innovative Technology and Exploring Engineering, 9(6), 750–753. https://doi.org/10.35940/ijitee.f3881.049620

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