Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework

With the recent COVID-19 pandemic, the world we knew changed significantly. The buying behavior shifted as well and is reflected by a growing transition to online interaction, higher media consumption and massive turn to online shopping. Companies that aim to remain top of mind to customers should e...

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Main Author: POPA, Alina
Format: Article
Language:English
Published: Technical University of Moldova 2021-06-01
Series:Journal of Social Sciences
Subjects:
Online Access:https://jss.utm.md/wp-content/uploads/sites/21/2021/05/10.52326jss.utm_.2021.42.09.pdf
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spelling doaj-8a5cbd363e634b68803a7ea69f6816fb2021-07-10T10:48:21ZengTechnical University of Moldova Journal of Social Sciences2587-34902587-35042021-06-0142849710.52326/jss.utm.2021.4(2).09Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual frameworkPOPA, Alina0https://orcid.org/0000-0001-8727-1687Bucharest Academy of Economic Studies, 6 Piața Romană, Bucharest, RomaniaWith the recent COVID-19 pandemic, the world we knew changed significantly. The buying behavior shifted as well and is reflected by a growing transition to online interaction, higher media consumption and massive turn to online shopping. Companies that aim to remain top of mind to customers should ensure that their way of interacting with user is both relevant and highly adaptive. Companies should invest in state-of-the-art technologies that help manage and optimize the relationship with the client based on both online and offline data. One of the most popular applications that companies use to develop the client relationship is a Recommender System. The vast majority of traditional recommender systems consider the recommendation as a static procedure and focus either on a specific type of recommendation or on some limited data. In this paper, it is proposed a novel Reinforcement Learning-based recommender system that has an integrative view over data and recommendation landscape, as well as it is highly adaptive to changes in customer behavior, the Holistic Adaptive Recommender System (HARS). From system design to detailed activities, it was attempted to present a comprehensive way of designing and developing a HARS system for an e-commerce company use-case as well as giving a suite of metrics that could be used for its evaluation.https://jss.utm.md/wp-content/uploads/sites/21/2021/05/10.52326jss.utm_.2021.42.09.pdfrecommender systemscustomer engagementreinforcement learningframeworkintegrated customer view
collection DOAJ
language English
format Article
sources DOAJ
author POPA, Alina
spellingShingle POPA, Alina
Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
Journal of Social Sciences
recommender systems
customer engagement
reinforcement learning
framework
integrated customer view
author_facet POPA, Alina
author_sort POPA, Alina
title Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
title_short Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
title_full Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
title_fullStr Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
title_full_unstemmed Designing a holistic adaptive recommender system (HARS) for customer relationship development: a conceptual framework
title_sort designing a holistic adaptive recommender system (hars) for customer relationship development: a conceptual framework
publisher Technical University of Moldova
series Journal of Social Sciences
issn 2587-3490
2587-3504
publishDate 2021-06-01
description With the recent COVID-19 pandemic, the world we knew changed significantly. The buying behavior shifted as well and is reflected by a growing transition to online interaction, higher media consumption and massive turn to online shopping. Companies that aim to remain top of mind to customers should ensure that their way of interacting with user is both relevant and highly adaptive. Companies should invest in state-of-the-art technologies that help manage and optimize the relationship with the client based on both online and offline data. One of the most popular applications that companies use to develop the client relationship is a Recommender System. The vast majority of traditional recommender systems consider the recommendation as a static procedure and focus either on a specific type of recommendation or on some limited data. In this paper, it is proposed a novel Reinforcement Learning-based recommender system that has an integrative view over data and recommendation landscape, as well as it is highly adaptive to changes in customer behavior, the Holistic Adaptive Recommender System (HARS). From system design to detailed activities, it was attempted to present a comprehensive way of designing and developing a HARS system for an e-commerce company use-case as well as giving a suite of metrics that could be used for its evaluation.
topic recommender systems
customer engagement
reinforcement learning
framework
integrated customer view
url https://jss.utm.md/wp-content/uploads/sites/21/2021/05/10.52326jss.utm_.2021.42.09.pdf
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