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Main Authors: Kharidia, Vansh, Paprunia, Dhruvi, Kanikar, Prashasti
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.15656
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author Kharidia, Vansh
Paprunia, Dhruvi
Kanikar, Prashasti
author_facet Kharidia, Vansh
Paprunia, Dhruvi
Kanikar, Prashasti
contents This paper presents LightFusionRec, a novel lightweight cross-domain recommendation system that integrates DistilBERT for textual feature extraction and FastText for genre embedding. Important issues in recommendation systems, such as data sparsity, computational efficiency, and cold start issues, are addressed in methodology. LightFusionRec uses a small amount of information to produce precise and contextually relevant recommendations for many media formats by fusing genre vector embedding with natural language processing algorithms. Tests conducted on extensive movie and book datasets show notable enhancements in suggestion quality when compared to conventional methods. Because of its lightweight design, the model can be used for a variety of purposes and allows for ondevice inference. LightFusionRec is a noteworthy development in cross-domain recommendation systems, providing accurate and scalable recommendations to improve user experience on digital content platforms.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15656
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LightFusionRec: Lightweight Transformers-Based Cross-Domain Recommendation Model
Kharidia, Vansh
Paprunia, Dhruvi
Kanikar, Prashasti
Artificial Intelligence
This paper presents LightFusionRec, a novel lightweight cross-domain recommendation system that integrates DistilBERT for textual feature extraction and FastText for genre embedding. Important issues in recommendation systems, such as data sparsity, computational efficiency, and cold start issues, are addressed in methodology. LightFusionRec uses a small amount of information to produce precise and contextually relevant recommendations for many media formats by fusing genre vector embedding with natural language processing algorithms. Tests conducted on extensive movie and book datasets show notable enhancements in suggestion quality when compared to conventional methods. Because of its lightweight design, the model can be used for a variety of purposes and allows for ondevice inference. LightFusionRec is a noteworthy development in cross-domain recommendation systems, providing accurate and scalable recommendations to improve user experience on digital content platforms.
title LightFusionRec: Lightweight Transformers-Based Cross-Domain Recommendation Model
topic Artificial Intelligence
url https://arxiv.org/abs/2410.15656