A Comparative Study on Fake Job Post Prediction Using Different Data mining Techniques

A Comparative Study on Fake Job Post Prediction Using Different Data mining Techniques

by DR K VENKATA NAGANJANEYULU
Publication Date: 09/06/2023

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Like many other classification tasks, fake job posing prediction leaves a lot of challenges to face. This paper proposed to use different data mining techniques and classification algorithm like KNN, decision tree, support vector machine, naïve bayes classifier, random forest classifier and deep neural network to predict a job post if it is real or fraudulent. We have experimented on Employment Scam Aegean Dataset (EMSCAD) containing 18000 samples. Deep neural network as a classifier, performs great for this classification task. We have used three dense layers for this deep neural network classifier. The trained classifier shows approximately 98% classification accuracy (DNN) to predict a fraudulent job post.

ISBN:
1230006532062
1230006532062
Category:
Information retrieval
Publication Date:
09-06-2023
Language:
English
Publisher:
DR K VENKATA NAGANJANEYULU

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