A Comparison of Three Methods of Task Analysis: Cognitive Analysis, Graph-Matrix Analysis, and Self-Organizing Networks

J. McGrew
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引用次数: 6

Abstract

Three methods of performing a task analysis are compared: cognitive analysis, graph-matrix analysis, and self-organizing networks. Cognitive analysis relies on the ability of an observer to abstract and generalize over situations. Graph-matrix analysis is valuable for its precision an inclusion of details. Neural networks have an ability to generalize uninfluenced by observer bias. Comparison demonstrates that each method misses some important but different aspect of human-computer interaction. The cognitive analysis included infrequently used information that was not captured by direct observation. The graph-matrix analysis included frequency of use information and details missed by the cognitive analysis. The self-organizing network generated an alternative view of the task structure that was not influenced by observer bias. It showed that the underlying structure for the user-computer interaction in this study was the structure of the computer system itself.
三种任务分析方法的比较:认知分析、图-矩阵分析和自组织网络
比较了执行任务分析的三种方法:认知分析、图矩阵分析和自组织网络。认知分析依赖于观察者对情况进行抽象和概括的能力。图-矩阵分析因其精确性和包含细节而有价值。神经网络具有不受观察者偏差影响的泛化能力。对比表明,每种方法都忽略了人机交互的一些重要但不同的方面。认知分析包括不经常使用的信息,这些信息不是通过直接观察获得的。图-矩阵分析包括使用频率信息和认知分析遗漏的细节。自组织网络产生了一个不受观察者偏见影响的任务结构的替代视图。这表明本研究中用户-计算机交互的底层结构是计算机系统本身的结构。
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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