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Extending GOMS to human error and applying it to error -tolerant design.

机译:将GOMS扩展到人为错误,并将其应用于容错设计。

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摘要

The primary purpose of this work is to develop a methodology for designing human-error tolerant systems using GOMS (Goals, Operators, Methods, Selection Rules) theory, a family of techniques for characterizing human performance, as a foundation. GOMS has been successfully used to model human performance for system design, but has typically been limited to practiced, error-free behavior. In this dissertation I present a general framework for error recovery and discuss extensions to GOMS theory to allow modeling of erroneous behavior. The GOMS extensions are implemented in GLEAN (GOMS Language Evaluation and Analysis), a software tool for automating the execution of GOMS models.;I also propose a technique, using GOMS, for analyzing systems to prevent human error. The technique is applied on WebStock, a web application designed to elicit human error, and the results are used to redesign WebStock's user interface. A human subjects experiment is used to evaluate the utility of GOMS error analysis by comparing the original WebStock interface with the interface improved using the technique. Some of the improved tasks were only changed in non-procedural ways (e.g. fonts, contrast, etc.). For other tasks, the procedures were improved (e.g. to reduce working memory load) in addition to the non-procedural changes. Over 200 errors were observed, the bulk of which involved some sort of memory failure. In the tasks where both non-procedural and procedural changes were made, there was an 80% decrease in the non-memory errors, and a 91% decrease in the memory errors. The results show that using GOMS error analysis can substantially reduce errors related to both the procedural and non-procedural aspects of an interface.
机译:这项工作的主要目的是开发一种基于GOMS(目标,运算符,方法,选择规则)理论(用于表征人类绩效的技术系列)来设计容错系统的方法。 GOMS已成功地用于对系统设计的人员绩效进行建模,但通常仅限于实践中的无错误行为。在本文中,我提出了一个错误恢复的通用框架,并讨论了对GOMS理论的扩展,以允许对错误行为进行建模。 GOMS扩展在GLEAN(GOMS语言评估和分析)中实现,GLEAN是用于自动执行GOMS模型的软件工具。我还提出了一种使用GOMS的技术,用于分析系统以防止人为错误。该技术应用于WebStock,WebStock是旨在引起人为错误的Web应用程序,其结果用于重新设计WebStock的用户界面。通过将原始WebStock界面与使用该技术改进的界面进行比较,使用人体实验来评估GOMS错误分析的实用性。某些改进的任务仅以非过程方式进行了更改(例如,字体,对比度等)。对于其他任务,除了非过程更改之外,还改进了过程(例如,以减少工作内存负载)。观察到200多个错误,其中大多数涉及某种内存故障。在同时进行了非过程和程序更改的任务中,非内存错误减少了80%,内存错误减少了91%。结果表明,使用GOMS错误分析可以大大减少与接口的过程和非过程方面有关的错误。

著录项

  • 作者

    Wood, Scott Devere.;

  • 作者单位

    University of Michigan.;

  • 授予单位 University of Michigan.;
  • 学科 Computer Science.;Psychology Cognitive.;Information Science.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 255 p.
  • 总页数 255
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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