Base-package recommendation framework based on consumer behaviours in IPTV platform
Internet Protocol TeleVision (IPTV) provides many services such as live television streaming, time-shifted media, and Video On Demand (VOD). However, many customers do not engage properly with their subscribed packages due to a lack of knowledge and poor guidance. Many customers fail to identify the...
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sg-smu-ink.sis_research-69202021-05-10T07:34:43Z Base-package recommendation framework based on consumer behaviours in IPTV platform SHANMUGALINGAM, Kuruparan RANGANAYANKE, Ruwinda GUNAWARDHAHA, Chanka NAVARATHNA, Rajitha Internet Protocol TeleVision (IPTV) provides many services such as live television streaming, time-shifted media, and Video On Demand (VOD). However, many customers do not engage properly with their subscribed packages due to a lack of knowledge and poor guidance. Many customers fail to identify the proper IPTV service package based on their needs and to utilise their current package to the maximum. In this paper, we propose a base-package recommendation model with a novel customer scoring-meter based on customers behaviour. Initially, our paper describes an algorithm to measure customers engagement score, which illustrates a novel approach to track customer engagement with the IPTV service provider. Next, the content-based recommendation system, which uses vector representation of subscribers and base packages details is described. We show the significance of our approach using local IPTV service provider data set qualitatively. The proposed approach can significantly improve user retention, long term revenue and customer satisfaction. 2020-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5917 info:doi/10.1109/DICTA51227.2020.9363400 https://ink.library.smu.edu.sg/context/sis_research/article/6920/viewcontent/Base_Package_IPTV_2020.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Customer scoring Feature engineering Machine learning Recommendation system Clustering Collaborative filtering Content filtering Customer Churn Numerical Analysis and Scientific Computing Television Theory and Algorithms |
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Customer scoring Feature engineering Machine learning Recommendation system Clustering Collaborative filtering Content filtering Customer Churn Numerical Analysis and Scientific Computing Television Theory and Algorithms SHANMUGALINGAM, Kuruparan RANGANAYANKE, Ruwinda GUNAWARDHAHA, Chanka NAVARATHNA, Rajitha Base-package recommendation framework based on consumer behaviours in IPTV platform |
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Internet Protocol TeleVision (IPTV) provides many services such as live television streaming, time-shifted media, and Video On Demand (VOD). However, many customers do not engage properly with their subscribed packages due to a lack of knowledge and poor guidance. Many customers fail to identify the proper IPTV service package based on their needs and to utilise their current package to the maximum. In this paper, we propose a base-package recommendation model with a novel customer scoring-meter based on customers behaviour. Initially, our paper describes an algorithm to measure customers engagement score, which illustrates a novel approach to track customer engagement with the IPTV service provider. Next, the content-based recommendation system, which uses vector representation of subscribers and base packages details is described. We show the significance of our approach using local IPTV service provider data set qualitatively. The proposed approach can significantly improve user retention, long term revenue and customer satisfaction. |
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author |
SHANMUGALINGAM, Kuruparan RANGANAYANKE, Ruwinda GUNAWARDHAHA, Chanka NAVARATHNA, Rajitha |
author_facet |
SHANMUGALINGAM, Kuruparan RANGANAYANKE, Ruwinda GUNAWARDHAHA, Chanka NAVARATHNA, Rajitha |
author_sort |
SHANMUGALINGAM, Kuruparan |
title |
Base-package recommendation framework based on consumer behaviours in IPTV platform |
title_short |
Base-package recommendation framework based on consumer behaviours in IPTV platform |
title_full |
Base-package recommendation framework based on consumer behaviours in IPTV platform |
title_fullStr |
Base-package recommendation framework based on consumer behaviours in IPTV platform |
title_full_unstemmed |
Base-package recommendation framework based on consumer behaviours in IPTV platform |
title_sort |
base-package recommendation framework based on consumer behaviours in iptv platform |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2020 |
url |
https://ink.library.smu.edu.sg/sis_research/5917 https://ink.library.smu.edu.sg/context/sis_research/article/6920/viewcontent/Base_Package_IPTV_2020.pdf |
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