A Comparison between Decision Trees and Markov Models to Support Proactive Interfaces

Joan De Boeck, Kristof Verpoorten, K. Luyten, K. Coninx
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Abstract

During the past few years, personal portable computer systems such as PDAs or laptops are being used in different contexts such as in meetings, at the office, or at home. In the current era of multimodal interaction, each context may require other interaction strategies or system settings to allow the end-users to reach their envisioned goals. For instance, in a meeting room a user may want to use the projection equipment and disable the audio output for a presentation, while audio input and output may be important while in a teleconference. In present computer systems most changes have to be made manually and require explicit interaction with the system. The number of different devices used in such environments makes that this configuration step results in a high cognitive load and causes interrupts of the tasks being executed by the end-user. In this paper we present how proactive user interfaces may predict the next interface changes invoked by context switches or user actions. In particular, we will focus on two machine learning algorithms, decision trees and Markov models, that may support this proactive behaviour for multimodal user interfaces. Based on some simple but relevant scenarios, we compare the outcome of both implementations in order to decide which algorithm is most applicable in this context.
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支持主动接口的决策树与马尔可夫模型的比较
在过去的几年中,个人便携式计算机系统,如掌上电脑或笔记本电脑,正在不同的环境中使用,如会议、办公室或家庭。在当前的多模式交互时代,每个上下文都可能需要其他交互策略或系统设置,以允许最终用户达到他们设想的目标。例如,在会议室中,用户可能希望使用投影设备并禁用演示文稿的音频输出,而在电话会议中,音频输入和输出可能很重要。在目前的计算机系统中,大多数更改必须手动进行,并且需要与系统进行明确的交互。在这种环境中使用的不同设备的数量使得此配置步骤导致高认知负载,并导致终端用户正在执行的任务中断。在本文中,我们介绍了主动用户界面如何预测上下文切换或用户操作所调用的下一个界面更改。特别地,我们将关注两种机器学习算法,决策树和马尔可夫模型,它们可能支持这种多模式用户界面的主动行为。基于一些简单但相关的场景,我们比较了两种实现的结果,以确定哪种算法最适用于此上下文中。
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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