Please use this identifier to cite or link to this item: https://dspace.uzhnu.edu.ua/jspui/handle/lib/31423
Title: Determining the eligibility of candidates for a vacancy using artificial neural networks
Authors: Лупей, Максим Іванович
Міца, Олександр Володимирович
Повхан, Ігор Федорович
Шаркань, Василь Васильович
Keywords: Artificial neural networks, Recruitment
Issue Date: 2020
Citation: Lupei, M., Mitsa, A., Povkhan, I., Sharkan, V. Determining the eligibility of candidates for a vacancy using artificial neural networks. 2020 IEEE Third Internatonal Conference on Data Stream Mining & Processing (DSMP’2020). P.18-22. doi: 10.1109/DSMP47368.2020.9204020
Abstract: With the development of technology, new methods are being created to solve various tasks. Methods that use artificial neural networks (ANN) have become part of our routine and are very rapidly rooted in the Internet and computers. This work uses modern achievements in the ANN and methods of their training to solve the problem of correlations between objects, namely, vacancies and candidate information. The task of recruiting staff to expand or upgrade their staff has been and still is today. With the development of the Internet, this task has made new sense, because many resumes are scattered across different web services. So the question is: How do employers review and process information on all job applicants? This is what artificial neural networks will help, because with their help this process can be completed several times faster.Methods that use artificial neural networks (ANN) have become part of our routine and are very rapidly rooted in the Internet and computers. This work uses modern achievements in the ANN and methods of their training to solve the problem of correlations between the objects, namely a vacancy and information about a candidate. A vast array of data is processed and relations between the specific components are discovered. The suggested approach can be used not only for this specific task but also for a whole class of similar tasks like classification and pattern recognitionAll these tasks can be solved with different ANN parameters which should be configured for every particular set of data. There are many ways to improves. From input text normalization and different vectorization algorithms to ANN topology, parameters, and training algorithms. Considered ANN and its parameters with chosen training algorithm works with high accuracy level only for tasks described in this paper. for every other task, there is a need to experimentally and theoretically proven other parameters and topology to reach high accuracy.
Type: Text
Publication type: Стаття
URI: https://dspace.uzhnu.edu.ua/jspui/handle/lib/31423
Appears in Collections:Наукові публікації кафедри інформаційних управляючих систем та технологій

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