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Taxonomy-aware collaborative denoising autoencoder for personalized recommendation

机译:分类学 - 感知协作Denoising Automencoder进行个性化推荐

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摘要

Taxonomies are ubiquitous in many real-world recommendation scenarios where each item is classified into a category of a predefined hierarchical taxonomy and provide important auxiliary information for inferring user preferences. However, traditional collaborative filtering approaches have focused on user-item interactions (e.g., ratings) and neglected the impact of taxonomy information on recommendation. In this paper, we present a taxonomy-aware denoising autoencoder based model which incorporates taxonomy-aware side information into denoising autoencoder based recommendation models to enhance recommendation accuracy and alleviate data sparsity and cold start problems in recommendation systems. We propose two types of taxonomic side information, namely the topological representation of tree-structured taxonomy and the statistical properties of the taxonomy. By integrating taxonomic side information, our model can learn more effective user latent vectors which are not only determined by user ratings but also rely on the taxonomy information. We conduct a comprehensive set of experiments on two real-world datasets which provide several outcomes: first, our proposed taxonomy-aware method outperforms the baseline method on RMSE metric. Next, information extracted from taxonomy can help alleviate data sparsity and cold start problems. Moreover, we conduct supplementary experiments to explore the reason why our proposed taxonomic side information improves recommendation performance.
机译:分类学在许多现实世界推荐方案中都是无处不在的,其中每个项目被分类为预定义的分类分类,并提供用于推断用户偏好的重要辅助信息。然而,传统的协同过滤方法专注于用户项目相互作用(例如,评级)并忽视了分类信息对推荐的影响。在本文中,我们提出了一种基于分类的分类知识的自动化模型,它将分类信息感知的侧面信息纳入去噪到基于AutoEncoder的推荐模型,以提高推荐准确性和缓解建议系统中的数据稀疏和冷启动问题。我们提出了两种类型的分类副信息,即树结构分类的拓扑表现和分类学的统计学性质。通过整合分类侧信息,我们的模型可以了解更多有效的用户潜在向量,这些向量不仅由用户评级确定,而且依赖于分类信息。我们在两个现实世界数据集中进行一套全面的实验,提供了几种结果:首先,我们提出的分类信息感知方法优于RMSE指标上的基线方法。接下来,从分类学中提取的信息可以帮助缓解数据稀疏性和冷启动问题。此外,我们开展补充实验,探讨我们所提出的分类管理员资料提高建议表现的原因。

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