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A Probabilistic Machine Learning Approach for Eligible Candidate Selection
Author(s) -
Marium-E- Jannat,
Sayma Sultana,
Munira Akther
Publication year - 2016
Publication title -
international journal of computer applications
Language(s) - English
Resource type - Journals
ISSN - 0975-8887
DOI - 10.5120/ijca2016910439
Subject(s) - computer science , selection (genetic algorithm) , probabilistic logic , machine learning , artificial intelligence
Now-a-days Machine learning approach is used to solve many problems where intelligence is involved. Lots of time consuming task are done by computers with the power of statistics. In this paper, a machine learning based candidate selection procedure is proposed and implemented for a particular field. A huge amount of activity is involved in the job recruitment procedure. To reduce the manual task a probabilistic machine learning approach is described in this paper. A popular machine learning approach named Naive Bayes Classifier is used to implement the method. Baseline criteria selection depends on the recruiters demand. The proposed system learns from training dataset and produces a short listed eligible list based on learning. The more perfectly one feed the system result will be more accurate. General Terms Candidate Selection, Job Recruitment.

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