基于深度强化学习的动态用户界面个性化

K. Silva, W. A. P. S. Abeyasekare, D. Dasanayake, T. B. Nandisena, D. Kasthurirathna, Archchana Kugathasan
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引用次数: 1

摘要

个性化是品牌识别和吸引消费者最受欢迎的方法之一。由于深度强化学习能够像人类从经验中学习一样学习行为,如果使用和评估得当,它可能会对个性化产生革命性的影响。本研究中提出的方法利用深度强化学习,其中人工代理可以通过与其环境的相互作用来训练。利用收集到的经验,代理能够以奖励的形式进行优化。所解释的方法可以在可以个性化的应用程序中使用。讨论了从改变网页布局到重新排列移动主屏幕上的图标的几个场景。主要目标是为web开发者和智能手机制造商开发一个API,以便根据应用程序的个性化,通过提高显著性,最小化选择时间,增加粘性,或这些的安排来实现。该技术可以管理各种调整,例如图形元素的显示方式及其行为方式。实验表明,考虑到用户界面元素的位置变化,从而实现个性化布局,可以改善用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic User Interface Personalization Based on Deep Reinforcement Learning
Personalization is one of the most sought out and popular methods for brand recognition and consumer attraction. The usage of deep reinforcement learning due to its' ability to learn actions the way humans learn from experience, if utilized and evaluated properly it can result in a revolutionary effect on personalization. The methodology proposed in this research utilizes deep reinforcement learning where an artificial agent may be trained by interacting with its environment. Utilizing the experience gathered, the agent is able optimize in the form of rewards. The approach explained, can be utilized across applications which can be personalized. Several scenarios ranging from changing the layout of webpages, to rearranging icons on mobile home screens are discussed. The main objective is to develop an API for the web developers and smartphone manufacturers to utilize so that depending on the application personalization can be achieved by enhancing saliency, minimizing selection time, increasing engagement, or an arrangement of these. The technique can manage a variety of adaptations, such as how graphical elements are shown and how they behave. An experiment was conducted which showcased improved user experience considering the position change of the user interface elements thereby personalizing the layout.
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