数据分析的认知工效学

V. Kalakoski, A. Henelius, Emilia Oikarinen, Antti Ukkonen, K. Puolamäki
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引用次数: 3

摘要

当今不断增长的数据量对认知人体工程学提出了新的要求,并需要新的设计思想来确保成功的人与数据交互。我们的目标是确定在设计系统时需要注意的认知因素,以改善基于大量数据的决策。我们设计了一个实验,模拟人们在数据分析情境中遇到的典型认知需求。我们通过20名参与者的行为实验证明了一些基本的认知局限性。研究任务向参与者展示了包含两组人信息的关键和非关键属性。他们必须选择关键属性出现频率较高的响应选项(组)。结果表明,判断的准确性随着信息量的增加而降低,判断受到无关信息的影响。因此,我们的结果表明,当人们利用数据时,关键的认知局限性,并建议在基于数据的决策中存在认知偏差。因此,在为认知进行设计时,我们应该考虑在数据分析背景下表现出来的人类认知局限性,并制定通用的认知工效学设计指南,以支持数据的利用和改进基于数据的决策。
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Cognitive ergonomics for data analysis
Today's ever-increasing amount of data places new demands on cognitive ergonomics and requires new design ideas to ensure successful human–data interaction. Our aim is to identify the cognitive factors that require attention when designing systems to improve decision-making based on large amounts of data. We designed an experiment that simulates the typical cognitive demands people encounter in data analysis situations. We demonstrate some essential cognitive limitations using a behavioural experiment with 20 participants. The studied task presented the participants with critical and noncritical attributes that contained information on two groups of people. They had to select the response option (group) with a higher frequency of critical attributes. The results showed that accuracy of judgement decreased as the amount of information increased, and that judgement was affected by irrelevant information. Our results thus demonstrate critical cognitive limitations when people utilise data and suggest a cognitive bias in data-based decision-making. Therefore, when designing for cognition, we should consider the human cognitive limitations that are manifested in a data analysis context and develop general cognitive ergonomics guidelines for design to support the utilisation of data and improve data-based decision-making.
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