Library book recommendation with CNN-FM deep learning approach

IF 3.4 3区 管理学 N/A INFORMATION SCIENCE & LIBRARY SCIENCE
Xiaohua Shi, Chen Hao, Ding Yue, Hongtao Lu
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引用次数: 0

Abstract

PurposeTraditional library book recommendation methods are mainly based on association rules and user profiles. They may help to learn about students' interest in different types of books, e.g., students majoring in science and engineering tend to pay more attention to computer books. Nevertheless, most of them still need to identify users' interests accurately. To solve the problem, the authors propose a novel embedding-driven model called InFo, which refers to users' intrinsic interests and academic preferences to provide personalized library book recommendations.Design/methodology/approachThe authors analyze the characteristics and challenges in real library book recommendations and then propose a method considering feature interactions. Specifically, the authors leverage the attention unit to extract students' preferences for different categories of books from their borrowing history, after which we feed the unit into the Factorization Machine with other context-aware features to learn students' hybrid interests. The authors employ a convolution neural network to extract high-order correlations among feature maps which are obtained by the outer product between feature embeddings.FindingsThe authors evaluate the model by conducting experiments on a real-world dataset in one university. The results show that the model outperforms other state-of-the-art methods in terms of two metrics called Recall and NDCG.Research limitations/implicationsIt requires a specific data size to prevent overfitting during model training, and the proposed method may face the user/item cold-start challenge.Practical implicationsThe embedding-driven book recommendation model could be applied in real libraries to provide valuable recommendations based on readers' preferences.Originality/valueThe proposed method is a practical embedding-driven model that accurately captures diverse user preferences.
图书馆图书推荐与CNN-FM深度学习方法
传统的图书馆图书推荐方法主要基于关联规则和用户配置文件。他们可以帮助了解学生对不同类型书籍的兴趣,例如,理工科专业的学生往往更关注计算机书籍。然而,大多数游戏仍然需要准确地识别用户的兴趣。为了解决这一问题,作者提出了一种新的嵌入驱动模型InFo,该模型参考用户的内在兴趣和学术偏好来提供个性化的图书馆图书推荐。设计/方法/途径作者分析了图书馆图书推荐的特点和面临的挑战,提出了一种考虑特征交互的方法。具体来说,作者利用注意力单元从学生的借阅历史中提取学生对不同类别书籍的偏好,然后我们将该单元与其他上下文感知功能一起输入分解机器,以了解学生的混合兴趣。作者采用卷积神经网络提取特征映射之间的高阶相关性,这些特征映射是由特征嵌入之间的外积得到的。作者通过在一所大学的真实数据集上进行实验来评估该模型。结果表明,该模型在召回率和NDCG两个指标方面优于其他最先进的方法。研究限制/启示需要特定的数据大小来防止模型训练过程中的过拟合,并且所提出的方法可能面临用户/项目冷启动的挑战。实际意义嵌入驱动的图书推荐模型可以应用于实际图书馆中,根据读者的偏好提供有价值的推荐。提出的方法是一种实用的嵌入驱动模型,可以准确捕获不同的用户偏好。
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来源期刊
Library Hi Tech
Library Hi Tech INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
8.30
自引率
44.10%
发文量
97
期刊介绍: ■Integrated library systems ■Networking ■Strategic planning ■Policy implementation across entire institutions ■Security ■Automation systems ■The role of consortia ■Resource access initiatives ■Architecture and technology ■Electronic publishing ■Library technology in specific countries ■User perspectives on technology ■How technology can help disabled library users ■Library-related web sites
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