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An Adaptive Feature Dimensionality Reduction Technique Based on Random Forest on Employee Turnover Prediction Model
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An Adaptive Feature Dimensionality Reduction Technique Based on Random Forest on Employee Turnover Prediction Model

Md Kabirul Islam, Mirza Mohtashim Alam, Md Baharul Islam, Karishma Mohiuddin, Amit Kishor Das and Md. Shamsul Kaonain
Advances in Computing and Data Sciences, pp.269-278
Communications in Computer and Information Science, Springer Singapore
10-26-2018

Abstract

Classifier Dimensionality reduction LDA PCA Random forest
This paper is based on the theme of employee attrition where the reasoning behind employee turnover has predicted with the help of machine learning approach. As employee turnover has become a vital issue these days due to heavy work pressure, less salary, less work satisfaction, poor working environment; it’s high time to uphold a better solution on this term. Therefore, we have come up with a prediction model based on machine learning approach where we have used each feature’s respective Random Forest importance weights while threshold based correlated feature merging into each of the single combined variable. Again, we scale specific features to get the correlated matrix of features matrix by defining threshold. Certainly, this newly developed technique has achieved good result for some algorithms compared to Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) for the same dataset.
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UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#8 Decent Work and Economic Growth

Source: SDGs in the Output

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