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Mining User Facebook Post Likes for Cross Domain Product Recommendations Across E- Commerce Platforms.
紀錄類型:
書目-語言資料,手稿 : Monograph/item
正題名/作者:
Mining User Facebook Post Likes for Cross Domain Product Recommendations Across E- Commerce Platforms./
作者:
Ainoo, Emmanuel.
面頁冊數:
1 online resource (144 pages)
附註:
Source: Masters Abstracts International, Volume: 85-08.
Contained By:
Masters Abstracts International85-08.
標題:
Web studies. -
電子資源:
click for full text (PQDT)
ISBN:
9798381699012
Mining User Facebook Post Likes for Cross Domain Product Recommendations Across E- Commerce Platforms.
Ainoo, Emmanuel.
Mining User Facebook Post Likes for Cross Domain Product Recommendations Across E- Commerce Platforms.
- 1 online resource (144 pages)
Source: Masters Abstracts International, Volume: 85-08.
Thesis (M.Sc.)--University of Windsor (Canada), 2024.
Includes bibliographical references
Ecommerce recommendation accuracy can be improved by mining patterns from other domains such as social media (Facebook), to predict purchase behaviours. The "cross-site cold start problem" arises when traditional recommender systems, relying on e-commerce purchase history, face platforms with no user history. Existing systems such as the GaoLinRec23 (2023) system that employs (CMF) Collective Matrix Factorization to jointly factorize user-item interaction matrices from both domains, WangZhaoRec21 (2021), GaoRec20 (2021), WangHeNeiChuaRec17 (2017), which also incorporate user attribute and social connections from the social media domain have attempted to bridge the gap, however the assumption that specific item embeddings which are the specific product details are shared between these domains does not align with the real-world scenario. Major e-commerce and social media platforms, including Amazon and Facebook, typically do not exchange granular product information. This disconnect poses a critical obstacle for existing recommendation systems in providing accurate suggestions for users starting with no observable e-commerce activity.This thesis proposes Facebook Data Cross Recommendation '2023 (FD-CDR '23) system, which uses the proposed MLTU (Mine Likes and Transactions per User) algorithm to extract likes and purchase history of users from both domains, transforming then into itemsets. A modified association rule mining is applied uncover patterns of frequent cooccurrence between user Facebook post likes and e-commerce transactions as rules. It then uses the proposed HARR (Hybrid Association Rule Recommendation) algorithm to match new user facebook likes to, generated rules such as "Users who typically like cooking posts, buy cooking recipes" without needing to share item embeddings across platforms and still solve the cross-site cold start problem. Experimental results with precision and recall show that the proposed FD-CDR'23 system provides more accurate recommendations than the mentioned existing systems.
Electronic reproduction.
Ann Arbor, Mich. :
ProQuest,
2024
Mode of access: World Wide Web
ISBN: 9798381699012Subjects--Topical Terms:
1148502
Web studies.
Subjects--Index Terms:
Rule miningIndex Terms--Genre/Form:
554714
Electronic books.
Mining User Facebook Post Likes for Cross Domain Product Recommendations Across E- Commerce Platforms.
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Ecommerce recommendation accuracy can be improved by mining patterns from other domains such as social media (Facebook), to predict purchase behaviours. The "cross-site cold start problem" arises when traditional recommender systems, relying on e-commerce purchase history, face platforms with no user history. Existing systems such as the GaoLinRec23 (2023) system that employs (CMF) Collective Matrix Factorization to jointly factorize user-item interaction matrices from both domains, WangZhaoRec21 (2021), GaoRec20 (2021), WangHeNeiChuaRec17 (2017), which also incorporate user attribute and social connections from the social media domain have attempted to bridge the gap, however the assumption that specific item embeddings which are the specific product details are shared between these domains does not align with the real-world scenario. Major e-commerce and social media platforms, including Amazon and Facebook, typically do not exchange granular product information. This disconnect poses a critical obstacle for existing recommendation systems in providing accurate suggestions for users starting with no observable e-commerce activity.This thesis proposes Facebook Data Cross Recommendation '2023 (FD-CDR '23) system, which uses the proposed MLTU (Mine Likes and Transactions per User) algorithm to extract likes and purchase history of users from both domains, transforming then into itemsets. A modified association rule mining is applied uncover patterns of frequent cooccurrence between user Facebook post likes and e-commerce transactions as rules. It then uses the proposed HARR (Hybrid Association Rule Recommendation) algorithm to match new user facebook likes to, generated rules such as "Users who typically like cooking posts, buy cooking recipes" without needing to share item embeddings across platforms and still solve the cross-site cold start problem. Experimental results with precision and recall show that the proposed FD-CDR'23 system provides more accurate recommendations than the mentioned existing systems.
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