A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network

The pandemic of COVID-19 has disrupted every human life by putting the global activities at halt. In such a situation, people while staying at home tend to have an increased consumption which also leads to an increased level of waste generation. The case of electronic waste is also not different; ho...

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Main Authors: Najmi, Arsalan, Kanapathy, Kanagi, Aziz, Azmin Azliza
Format: Article
Published: Springer 2022
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Online Access:http://eprints.um.edu.my/33683/
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spelling my.um.eprints.336832022-07-20T06:34:56Z http://eprints.um.edu.my/33683/ A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network Najmi, Arsalan Kanapathy, Kanagi Aziz, Azmin Azliza HB Economic Theory QA Mathematics The pandemic of COVID-19 has disrupted every human life by putting the global activities at halt. In such a situation, people while staying at home tend to have an increased consumption which also leads to an increased level of waste generation. The case of electronic waste is also not different; however, it has severe repercussions while comparing it with other general household wastes. The application of reverse logistics by the manufacturers though serve the purpose but its success is highly dependent on the participation of the consumers. Hence, the present study is an attempt to gauge the level of participation of the consumers in the reverse exchange programs. Because of the predictability limitations of the typical Structural-Equation-Modelling models, the present study employs the deep learning of the dual-staged partial least squares-structural equation modelling artificial neural network approach. The findings of the study confirms the individual's attitude as the most significant determinant of the intention to exchange, followed by level of awareness and norms, whereas perceived behavior control was found to be least important though significant. Based on these findings, the manufacturers have been recommended to improve the consumers' involvement in reverse exchange programs, whereas government institutions are also recommended to encourage public-private partnerships in channelizing the product returns. Springer 2022-01 Article PeerReviewed Najmi, Arsalan and Kanapathy, Kanagi and Aziz, Azmin Azliza (2022) A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network. Journal of Material Cycles and Waste Management, 24 (1, SI). pp. 410-424. ISSN 1438-4957, DOI https://doi.org/10.1007/s10163-021-01332-2 <https://doi.org/10.1007/s10163-021-01332-2>. 10.1007/s10163-021-01332-2
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic HB Economic Theory
QA Mathematics
spellingShingle HB Economic Theory
QA Mathematics
Najmi, Arsalan
Kanapathy, Kanagi
Aziz, Azmin Azliza
A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
description The pandemic of COVID-19 has disrupted every human life by putting the global activities at halt. In such a situation, people while staying at home tend to have an increased consumption which also leads to an increased level of waste generation. The case of electronic waste is also not different; however, it has severe repercussions while comparing it with other general household wastes. The application of reverse logistics by the manufacturers though serve the purpose but its success is highly dependent on the participation of the consumers. Hence, the present study is an attempt to gauge the level of participation of the consumers in the reverse exchange programs. Because of the predictability limitations of the typical Structural-Equation-Modelling models, the present study employs the deep learning of the dual-staged partial least squares-structural equation modelling artificial neural network approach. The findings of the study confirms the individual's attitude as the most significant determinant of the intention to exchange, followed by level of awareness and norms, whereas perceived behavior control was found to be least important though significant. Based on these findings, the manufacturers have been recommended to improve the consumers' involvement in reverse exchange programs, whereas government institutions are also recommended to encourage public-private partnerships in channelizing the product returns.
format Article
author Najmi, Arsalan
Kanapathy, Kanagi
Aziz, Azmin Azliza
author_facet Najmi, Arsalan
Kanapathy, Kanagi
Aziz, Azmin Azliza
author_sort Najmi, Arsalan
title A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
title_short A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
title_full A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
title_fullStr A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
title_full_unstemmed A pathway to involve consumers for exchanging electronic waste: A deep learning integration of structural equation modelling and artificial neural network
title_sort pathway to involve consumers for exchanging electronic waste: a deep learning integration of structural equation modelling and artificial neural network
publisher Springer
publishDate 2022
url http://eprints.um.edu.my/33683/
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score 13.18916