Sequential Recommendations on GitHub Repository

The software development platform is an increasingly expanding industry. It is growing steadily due to the active research and sharing of artificial intelligence and deep learning. Further, predicting users’ propensity in this huge community and recommending a new repository is beneficial for resear...

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Published in:Applied Sciences
Main Authors: JaeWon Kim, JeongA Wi, YoungBin Kim
Format: Article
Language:English
Published: MDPI AG 2021-02-01
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/4/1585
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author JaeWon Kim
JeongA Wi
YoungBin Kim
author_facet JaeWon Kim
JeongA Wi
YoungBin Kim
author_sort JaeWon Kim
collection DOAJ
container_title Applied Sciences
description The software development platform is an increasingly expanding industry. It is growing steadily due to the active research and sharing of artificial intelligence and deep learning. Further, predicting users’ propensity in this huge community and recommending a new repository is beneficial for researchers and users. Despite this, only a few researches have been done on the recommendation system of such platforms. In this study, we propose a method to model extensive user data of an online community with a deep learning-based recommendation system. This study shows that a new repository can be effectively recommended based on the accumulated big data from the user. Moreover, this study is the first study of the sequential recommendation system that provides a new dataset of a software development platform, which is as large as the prevailing datasets. The experiments show that the proposed dataset can be practiced in various recommendation tasks.
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spelling doaj-art-9ff732ff907f4ccca8a6bf11744fa6482025-08-19T22:23:29ZengMDPI AGApplied Sciences2076-34172021-02-01114158510.3390/app11041585Sequential Recommendations on GitHub RepositoryJaeWon Kim0JeongA Wi1YoungBin Kim2Department of Image Science and Arts, Chung-Ang University, Dongjak, Seoul 06974, KoreaDepartment of Image Science and Arts, Chung-Ang University, Dongjak, Seoul 06974, KoreaDepartment of Image Science and Arts, Chung-Ang University, Dongjak, Seoul 06974, KoreaThe software development platform is an increasingly expanding industry. It is growing steadily due to the active research and sharing of artificial intelligence and deep learning. Further, predicting users’ propensity in this huge community and recommending a new repository is beneficial for researchers and users. Despite this, only a few researches have been done on the recommendation system of such platforms. In this study, we propose a method to model extensive user data of an online community with a deep learning-based recommendation system. This study shows that a new repository can be effectively recommended based on the accumulated big data from the user. Moreover, this study is the first study of the sequential recommendation system that provides a new dataset of a software development platform, which is as large as the prevailing datasets. The experiments show that the proposed dataset can be practiced in various recommendation tasks.https://www.mdpi.com/2076-3417/11/4/1585datasetdeep neural networkimplicit feedbackrecommendation systemsequential recommendation systems
spellingShingle JaeWon Kim
JeongA Wi
YoungBin Kim
Sequential Recommendations on GitHub Repository
dataset
deep neural network
implicit feedback
recommendation system
sequential recommendation systems
title Sequential Recommendations on GitHub Repository
title_full Sequential Recommendations on GitHub Repository
title_fullStr Sequential Recommendations on GitHub Repository
title_full_unstemmed Sequential Recommendations on GitHub Repository
title_short Sequential Recommendations on GitHub Repository
title_sort sequential recommendations on github repository
topic dataset
deep neural network
implicit feedback
recommendation system
sequential recommendation systems
url https://www.mdpi.com/2076-3417/11/4/1585
work_keys_str_mv AT jaewonkim sequentialrecommendationsongithubrepository
AT jeongawi sequentialrecommendationsongithubrepository
AT youngbinkim sequentialrecommendationsongithubrepository