Inductive Contextual Relation Learning for Personalization

Chuxu Zhang, Huaxiu Yao, Lu Yu, Chao Huang, Dongjin Song, Haifeng Chen, Meng Jiang, N. Chawla
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引用次数: 5

Abstract

Web personalization, e.g., recommendation or relevance search, tailoring a service/product to accommodate specific online users, is becoming increasingly important. Inductive personalization aims to infer the relations between existing entities and unseen new ones, e.g., searching relevant authors for new papers or recommending new items to users. This problem, however, is challenging since most of recent studies focus on transductive problem for existing entities. In addition, despite some inductive learning approaches have been introduced recently, their performance is sub-optimal due to relatively simple and inflexible architectures for aggregating entity’s content. To this end, we propose the inductive contextual personalization (ICP) framework through contextual relation learning. Specifically, we first formulate the pairwise relations between entities with a ranking optimization scheme that employs neural aggregator to fuse entity’s heterogeneous contents. Next, we introduce a node embedding term to capture entity’s contextual relations, as a smoothness constraint over the prior ranking objective. Finally, the gradient descent procedure with adaptive negative sampling is employed to learn the model parameters. The learned model is capable of inferring the relations between existing entities and inductive ones. Thorough experiments demonstrate that ICP outperforms numerous baseline methods for two different applications, i.e., relevant author search and new item recommendation.
个性化的归纳语境关系学习
网络个性化,例如,推荐或相关搜索,定制服务/产品以适应特定的在线用户,正变得越来越重要。归纳个性化旨在推断现有实体和未见的新实体之间的关系,例如,为新论文搜索相关作者或向用户推荐新项目。然而,这个问题具有挑战性,因为最近的研究大多集中在现有实体的转导问题上。此外,尽管最近引入了一些归纳学习方法,但由于聚合实体内容的体系结构相对简单和不灵活,它们的性能不是最优的。为此,我们提出了基于语境关系学习的归纳语境个性化(ICP)框架。具体来说,我们首先用一种排序优化方案来表达实体之间的两两关系,该方案利用神经聚合器来融合实体的异构内容。接下来,我们引入一个节点嵌入项来捕获实体的上下文关系,作为对先前排序目标的平滑约束。最后,采用自适应负采样梯度下降法学习模型参数。学习的模型能够推断现有实体和归纳实体之间的关系。深入的实验表明,在相关作者搜索和新项目推荐两种不同的应用中,ICP优于许多基线方法。
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