Employment Prediction Using Logistic Regression Algorithm

A. Dasgupta, D. Ghosh, Jatin Vyas
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Abstract

Prediction is a forecast of an event which may happen in future. Predictions are not necessary based upon the prior knowledge or experience for an event of interest. Every person does predictions but the quality of the predictions differs from person to person and that classifies them as a successful or unsuccessful person. In order to make quality predictions it is necessary to automate the making prediction process. Machine Learning is a field where in computer machines are trained to make accurate predictions. Some of the applications of machine learning predictions are weather forecasting, disease detection, traffic prediction, email and malware detection, fraud detection. Prediction of employability for a candidate in a recruitment process is been calculated by using machine learning. Organizations are now investing in machine learning based automated systems for identifying a right skilled candidate. This research introduces a model buildout to predict the employability of a candidate by using Logistic Regression. A group of aspirants were tested in the suggested model and outcome are analyzed in this research paper.
基于Logistic回归算法的就业预测
预测是对将来可能发生的事件的预测。没有必要基于对感兴趣的事件的先验知识或经验进行预测。每个人都会做预测,但预测的质量因人而异,这就区分了成功人士和不成功人士。为了进行高质量的预测,有必要使预测过程自动化。机器学习是一个训练计算机机器做出准确预测的领域。机器学习预测的一些应用包括天气预报、疾病检测、交通预测、电子邮件和恶意软件检测、欺诈检测。在招聘过程中,候选人的就业能力预测是通过使用机器学习来计算的。组织现在正在投资基于机器学习的自动化系统,以识别合适的技能候选人。本研究采用逻辑回归的方法,建立一个预测候选人就业能力的模型。本文对一组有抱负的人进行了模型测试,并对结果进行了分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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