计算机工程与设计2024,Vol.45Issue(6) :1743-1749.DOI:10.16208/j.issn1000-7024.2024.06.020

融合项目特征级信息的稀疏兴趣网络序列推荐

Integrate project feature-level information and sparse-interest network for sequential recommendation

胡胜利 武静雯 林凯
计算机工程与设计2024,Vol.45Issue(6) :1743-1749.DOI:10.16208/j.issn1000-7024.2024.06.020

融合项目特征级信息的稀疏兴趣网络序列推荐

Integrate project feature-level information and sparse-interest network for sequential recommendation

胡胜利 1武静雯 1林凯1
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作者信息

  • 1. 安徽理工大学计算机科学与工程学院,安徽 淮南 232000
  • 折叠

摘要

在以往提取多兴趣嵌入的序列推荐模型中仅能通过聚类的方法发现少量兴趣概念,忽视项目交互序列中特征级信息对最终推荐结果的影响.针对此问题,对传统的多兴趣序列推荐模型进行改进,提出一种融合项目特征级信息的稀疏兴趣网络序列推荐模型.实验结果表明,相比其它模型,该模型可以更好捕捉用户的多样化偏好并缓解冷启动问题.在给定数据集上,该模型比传统的序列推荐模型在命中率上平均提高了 6.4%,归一化折损累计增益平均提高了 8.7%.

Abstract

Only a small number of interest concepts can be found by clustering in the previous sequence recommendation model for extracting multi interest embeddings,and these models also ignore the feature level information in the project interaction sequence.Aiming at these problem,the traditional multi-interest sequential recommendation model was optimized and a sparse-interest network sequential recommendation model integrating project feature-level information was proposed.Experimental results show that this model can better capture the diverse preferences of users and alleviate the cold start problem than other models.Compared with traditional sequence recommendation model,the average hit rate of this model is increased by 6.4%,and the average normalized discounted cumulative gain is increased by 8.7%on given data sets.

关键词

深度学习/序列推荐/多兴趣/稀疏兴趣网络/嵌入表征/特征级信息/特征融合

Key words

deep learning/sequential recommendation/multi interest/sparse-interest network/embedding representation/fea-ture-level information/feature fusion

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基金项目

国家自然科学基金(61572034)

出版年

2024
计算机工程与设计
中国航天科工集团二院706所

计算机工程与设计

CSTPCD北大核心
影响因子:0.617
ISSN:1000-7024
参考文献量3
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