Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning

The purpose of the scientific article is to present a study of a recommendation service architecture designed to help applicants in choosing the training area at a higher education institution. The main function of the service is to provide applicants with personalised recommendations for training b...

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Main Author: A. M. Prokhorova
Format: Article
Language:English
Published: Publishing House of the State University of Management 2024-06-01
Series:Вестник университета
Subjects:
Online Access:https://vestnik.guu.ru/jour/article/view/5282
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author A. M. Prokhorova
author_facet A. M. Prokhorova
author_sort A. M. Prokhorova
collection DOAJ
description The purpose of the scientific article is to present a study of a recommendation service architecture designed to help applicants in choosing the training area at a higher education institution. The main function of the service is to provide applicants with personalised recommendations for training based on their preferences, interests, academic achievements and ranking of the institution. The architecture is founded on the principle of client-server interaction when clients can receive personalised recommendations and interact with the service through a web interface. The article accomplished the following objectives: the architectural decomposition and description of the main components of the service are completed; a machine learning method is presented, including a collaborative filtering algorithm that is used in the service and allows to consider preferences and offers of other applicants with similar interests and educational profile; recommendations for choosing a user interface for convenient interaction with the service have been developed; test cases have been conducted to assess the effectiveness of the recommendation service. The study shows that the use of the collaborative filtering method in the service architecture makes it possible to achieve high accuracy and satisfaction of applicants when providing recommendations on choosing the training area at a higher education institution. The article has practical significance, as it represents a real application of the machine learning method and service architecture to help applicants choose the field of study. The research results may be useful for the development of similar services in the educational field.
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series Вестник университета
spelling doaj-art-170942be9a4f419aa9b91d44bb82109e2025-02-04T08:28:21ZengPublishing House of the State University of ManagementВестник университета1816-42772686-84152024-06-010521222410.26425/1816-4277-2024-5-212-2243115Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learningA. M. Prokhorova0Rostov State University of EconomicsThe purpose of the scientific article is to present a study of a recommendation service architecture designed to help applicants in choosing the training area at a higher education institution. The main function of the service is to provide applicants with personalised recommendations for training based on their preferences, interests, academic achievements and ranking of the institution. The architecture is founded on the principle of client-server interaction when clients can receive personalised recommendations and interact with the service through a web interface. The article accomplished the following objectives: the architectural decomposition and description of the main components of the service are completed; a machine learning method is presented, including a collaborative filtering algorithm that is used in the service and allows to consider preferences and offers of other applicants with similar interests and educational profile; recommendations for choosing a user interface for convenient interaction with the service have been developed; test cases have been conducted to assess the effectiveness of the recommendation service. The study shows that the use of the collaborative filtering method in the service architecture makes it possible to achieve high accuracy and satisfaction of applicants when providing recommendations on choosing the training area at a higher education institution. The article has practical significance, as it represents a real application of the machine learning method and service architecture to help applicants choose the field of study. The research results may be useful for the development of similar services in the educational field.https://vestnik.guu.ru/jour/article/view/5282recommendation servicerecommendation service architecturechoice of training areahigher education institutionapplicantscollaborative filtering methodmachine learning
spellingShingle A. M. Prokhorova
Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
Вестник университета
recommendation service
recommendation service architecture
choice of training area
higher education institution
applicants
collaborative filtering method
machine learning
title Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
title_full Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
title_fullStr Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
title_full_unstemmed Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
title_short Architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
title_sort architecture of a recommendation service for choosing training areas at a higher education institution by applicants with the method of collaborative filtering of machine learning
topic recommendation service
recommendation service architecture
choice of training area
higher education institution
applicants
collaborative filtering method
machine learning
url https://vestnik.guu.ru/jour/article/view/5282
work_keys_str_mv AT amprokhorova architectureofarecommendationserviceforchoosingtrainingareasatahighereducationinstitutionbyapplicantswiththemethodofcollaborativefilteringofmachinelearning