Applying data mining techniques in job recommender system for considering candidate job preferences

Advances in Computing, Communications and Informatics(2014)

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摘要
Job recommender systems are desired to attain a high level of accuracy while making the predictions which are relevant to the customer, as it becomes a very tedious task to explore thousands of jobs, posted on the web, periodically. Although a lot of job recommender systems exist that uses different strategies , here efforts have been put to make the job recommendations on the basis of candidate's profile matching as well as preserving candidate's job behavior or preferences. Firstly, rules predicting the general preferences of the different user groups are mined. Then the job recommendations to the target candidate are made on the basis of content based matching as well as candidate preferences, which are preserved either in the form of mined rules or obtained by candidate's own applied jobs history. Through this technique a significant level of accuracy has been achieved over other basic methods of job recommendations.
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关键词
Internet,data mining,decision trees,job specification,recommender systems,World Wide Web,candidate job behavior,candidate job preferences,candidate profile matching,content based matching,data mining techniques,job recommender system,Classification Rules,Content Based similarity,Data mining,Decision Tree,Job recommendations
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