User-centric learning for multiple access selections

We are in the age where business growth is based on how user-centric your services or goods is. Current research on wireless system is more focused on ensuring that user could achieve optimal throughput with minimal delay, disregarding what user actually wants from the services. Looking from con-nec...

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Main Authors: Dzulkifly S., Hashim W., Ismail A.F., Dohler M.
Other Authors: 55569716800
Format: Article
Published: Blue Eyes Intelligence Engineering and Sciences Publication 2023
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spelling my.uniten.dspace-244202023-05-29T15:23:23Z User-centric learning for multiple access selections Dzulkifly S. Hashim W. Ismail A.F. Dohler M. 55569716800 11440260100 36602773900 12791370000 We are in the age where business growth is based on how user-centric your services or goods is. Current research on wireless system is more focused on ensuring that user could achieve optimal throughput with minimal delay, disregarding what user actually wants from the services. Looking from con-nectivity point of view, especially in urban areas these days, there are multiple mobile and wireless access that user could choose to get connected to. As people are looking toward machine automa-tion, we understand that the same could be done for allowing users to choose services based on their own requirement. This paper looks into unconventional, non-disruptive approach to provide mobile services based on user requirements. The first stage of this study is to look for user association from three new perspectives. The second stage involved utilizing a reinforcement learning algorithm known as q-learning, to learn from feedbacks to identify optimal decision in reaching user-centric requirement goal. The outcome from the proposed deployment has shown significant improvement in user association with learning aware solution � BEIESP. Final 2023-05-29T07:23:23Z 2023-05-29T07:23:23Z 2019 Article 10.35940/ijeat.A2666.109119 2-s2.0-85074573760 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85074573760&doi=10.35940%2fijeat.A2666.109119&partnerID=40&md5=66bf4d46866b33268dd147ab29cac4fc https://irepository.uniten.edu.my/handle/123456789/24420 9 1 2338 2344 All Open Access, Bronze Blue Eyes Intelligence Engineering and Sciences Publication Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description We are in the age where business growth is based on how user-centric your services or goods is. Current research on wireless system is more focused on ensuring that user could achieve optimal throughput with minimal delay, disregarding what user actually wants from the services. Looking from con-nectivity point of view, especially in urban areas these days, there are multiple mobile and wireless access that user could choose to get connected to. As people are looking toward machine automa-tion, we understand that the same could be done for allowing users to choose services based on their own requirement. This paper looks into unconventional, non-disruptive approach to provide mobile services based on user requirements. The first stage of this study is to look for user association from three new perspectives. The second stage involved utilizing a reinforcement learning algorithm known as q-learning, to learn from feedbacks to identify optimal decision in reaching user-centric requirement goal. The outcome from the proposed deployment has shown significant improvement in user association with learning aware solution � BEIESP.
author2 55569716800
author_facet 55569716800
Dzulkifly S.
Hashim W.
Ismail A.F.
Dohler M.
format Article
author Dzulkifly S.
Hashim W.
Ismail A.F.
Dohler M.
spellingShingle Dzulkifly S.
Hashim W.
Ismail A.F.
Dohler M.
User-centric learning for multiple access selections
author_sort Dzulkifly S.
title User-centric learning for multiple access selections
title_short User-centric learning for multiple access selections
title_full User-centric learning for multiple access selections
title_fullStr User-centric learning for multiple access selections
title_full_unstemmed User-centric learning for multiple access selections
title_sort user-centric learning for multiple access selections
publisher Blue Eyes Intelligence Engineering and Sciences Publication
publishDate 2023
_version_ 1806426443760009216
score 13.211869