Deep Sequential Recommendation for Personalized Adaptive User Interfaces

Harold Soh, S. Sanner, Madeleine White, G. Jamieson
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引用次数: 52

Abstract

Adaptive user-interfaces (AUIs) can enhance the usability of complex software by providing real-time contextual adaptation and assistance. Ideally, AUIs should be personalized and versatile, i.e., able to adapt to each user who may perform a variety of complex tasks. But this is difficult to achieve with many interaction elements when data-per-user is sparse. In this paper, we propose an architecture for personalized AUIs that leverages upon developments in (1) deep learning, particularly gated recurrent units, to efficiently learn user interaction patterns, (2) collaborative filtering techniques that enable sharing of data among users, and (3) fast approximate nearest-neighbor methods in Euclidean spaces for quick UI control and/or content recommendations. Specifically, interaction histories are embedded in a learned space along with users and interaction elements; this allows the AUI to query and recommend likely next actions based on similar usage patterns across the user base. In a comparative evaluation on user-interface, web-browsing and e-learning datasets, the deep recurrent neural-network (DRNN) outperforms state-of-the-art tensor-factorization and metric embedding methods.
个性化自适应用户界面的深度顺序推荐
自适应用户界面(AUIs)可以通过提供实时上下文适应和帮助来增强复杂软件的可用性。理想情况下,ui应该是个性化的和通用的,也就是说,能够适应可能执行各种复杂任务的每个用户。但是,当每个用户的数据稀疏时,这很难实现许多交互元素。在本文中,我们提出了一种个性化UI的架构,该架构利用了以下方面的发展:(1)深度学习,特别是门控循环单元,以有效地学习用户交互模式;(2)协作过滤技术,使用户之间能够共享数据;(3)欧几里得空间中的快速近似近邻方法,用于快速UI控制和/或内容推荐。具体来说,交互历史与用户和交互元素一起嵌入到学习空间中;这允许AUI根据用户群的类似使用模式查询并推荐可能的下一步操作。在用户界面、网页浏览和电子学习数据集的比较评估中,深度递归神经网络(DRNN)优于最先进的张量分解和度量嵌入方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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