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Main Authors: Liu, Wenyi, Wang, Rui, Luo, Yuanshuai, Wei, Jianjun, Zhao, Zihao, Huang, Junming
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.15026
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author Liu, Wenyi
Wang, Rui
Luo, Yuanshuai
Wei, Jianjun
Zhao, Zihao
Huang, Junming
author_facet Liu, Wenyi
Wang, Rui
Luo, Yuanshuai
Wei, Jianjun
Zhao, Zihao
Huang, Junming
contents With the explosive growth of Internet data, users are facing the problem of information overload, which makes it a challenge to efficiently obtain the required resources. Recommendation systems have emerged in this context. By filtering massive amounts of information, they provide users with content that meets their needs, playing a key role in scenarios such as advertising recommendation and product recommendation. However, traditional click-through rate prediction and TOP-K recommendation mechanisms are gradually unable to meet the recommendations needs in modern life scenarios due to high computational complexity, large memory consumption, long feature selection time, and insufficient feature interaction. This paper proposes a recommendations system model based on a separation embedding cross-network. The model uses an embedding neural network layer to transform sparse feature vectors into dense embedding vectors, and can independently perform feature cross operations on different dimensions, thereby improving the accuracy and depth of feature mining. Experimental results show that the model shows stronger adaptability and higher prediction accuracy in processing complex data sets, effectively solving the problems existing in existing models.
format Preprint
id arxiv_https___arxiv_org_abs_2410_15026
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Recommendation Model Utilizing Separation Embedding and Self-Attention for Feature Mining
Liu, Wenyi
Wang, Rui
Luo, Yuanshuai
Wei, Jianjun
Zhao, Zihao
Huang, Junming
Information Retrieval
Artificial Intelligence
With the explosive growth of Internet data, users are facing the problem of information overload, which makes it a challenge to efficiently obtain the required resources. Recommendation systems have emerged in this context. By filtering massive amounts of information, they provide users with content that meets their needs, playing a key role in scenarios such as advertising recommendation and product recommendation. However, traditional click-through rate prediction and TOP-K recommendation mechanisms are gradually unable to meet the recommendations needs in modern life scenarios due to high computational complexity, large memory consumption, long feature selection time, and insufficient feature interaction. This paper proposes a recommendations system model based on a separation embedding cross-network. The model uses an embedding neural network layer to transform sparse feature vectors into dense embedding vectors, and can independently perform feature cross operations on different dimensions, thereby improving the accuracy and depth of feature mining. Experimental results show that the model shows stronger adaptability and higher prediction accuracy in processing complex data sets, effectively solving the problems existing in existing models.
title A Recommendation Model Utilizing Separation Embedding and Self-Attention for Feature Mining
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2410.15026