...
首页> 外文期刊>Human-computer interaction >Automating Human-Performance Modeling at the Millisecond Level
【24h】

Automating Human-Performance Modeling at the Millisecond Level

机译:毫秒级自动化的人类绩效建模

获取原文
获取原文并翻译 | 示例

摘要

A priori prediction of skilled human performance has the potential to be of great practical value but is difficult to carry out. This article reports on an approach that facilitates modeling of human behavior at the level of cognitive, perceptual, and motoroperations, followingthe CPM-GOMS method (John, 1990). CPM-GOMSisa powerful modeling method that has remained underused because of the expertise and labor required. We describe a process for automatically generating CPM-GOMS models from a hierarchical task decomposition expressed in a computational modeling tool, taking advantage of reusable behavior templates and their efficacy for generating zero-parameter a priori predictions of complex human behavior. To demonstrate the process, we present a model of automated teller machine interaction. The model shows that it is possible to string together existing behavioral templates that compose basic HCI tasks, (e.g., mousing to a button and clicking on it) to generate powerful human performance predictions. Because interleaving of templates is now automated, it becomes possible to construct arbitrarily long sequences of behavior. In addition, the manipulation and adaptation of complete models has the potential of becoming dramatically easier. Thus, the tool described here provides an engine for CPM-GOMS that may facilitate computational modeling of human performance at the millisecond level.
机译:对人类熟练技能的先验预测具有很大的实用价值,但很难执行。本文报告了一种遵循CPM-GOMS方法(John,1990年)的方法,该方法有助于在认知,知觉和运动操作方面对人类行为进行建模。 CPM-GOMSisa功能强大的建模方法由于所需的专业知识和劳动力而未被充分利用。我们描述了一种过程,该过程可利用可重用的行为模板及其用于生成零参数的复杂人类行为先验预测的功效,从在计算建模工具中表达的分层任务分解中自动生成CPM-GOMS模型。为了演示该过程,我们提出了一个自动柜员机交互模型。该模型表明,可以将构成基本HCI任务的现有行为模板串在一起(例如,将鼠标悬停在按钮上并单击它)以生成强大的人类绩效预测。由于模板的交织现在是自动化的,因此可以构造任意长的行为序列。此外,对完整模型的操纵和修改可能会变得非常容易。因此,此处描述的工具提供了用于CPM-GOMS的引擎,可以促进毫秒级人类行为的计算建模。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号