A Statistical Evaluation of Combining Human Productivity Metrics in the Indoor Environment

Kevin Keene, Wooyoung Jung
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Abstract

The potential of improving human productivity by providing healthy indoor environments has been a consistent interest in the building field for decades. This research field’s long-standing challenge is to measure human productivity given the complex nature of office work. Previous studies have diversified productivity metrics, allowing greater flexibility in collecting human data; however, this diversity complicates the ability to combine productivity metrics from disparate studies within a meta-analysis. This study aims to categorize existing productivity metrics and statistically assess which categories show similar behavior when used to measure the impacts of indoor environmental quality. The 106 productivity metrics compiled were grouped into six productivity metric categories: neurobehavioral speed, accuracy, neurobehavioral response time, call handling time, self-reported productivity, and performance score. Then, this study set neurobehavioral speed as the baseline category given its fitness to the efficiency-based definition of productivity (i.e., output versus input) and conducted three statistical analyses with the other categories to evaluate their similarity. As results, the categories of neurobehavioral response time, self-reported productivity, and call handling time were found to have statistical similarity with neurobehavioral speed. This study contributes to creating a constructive research environment for future meta-analyses to understand which human productivity metrics can be combined with each other.
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室内环境中结合人类生产力指标的统计评价
几十年来,通过提供健康的室内环境来提高人类生产力的潜力一直是建筑领域的一个一致的兴趣。考虑到办公室工作的复杂性,这个研究领域长期以来面临的挑战是衡量人类的生产力。以前的研究采用了多样化的生产率指标,允许更大的灵活性来收集人类数据;然而,这种多样性使得在荟萃分析中结合来自不同研究的生产力指标的能力变得复杂。本研究旨在对现有的生产力指标进行分类,并统计评估哪些类别在用于衡量室内环境质量影响时表现出相似的行为。编制的106个生产力指标分为6个生产力指标类别:神经行为速度、准确性、神经行为响应时间、呼叫处理时间、自我报告的生产力和绩效评分。然后,本研究将神经行为速度作为基线类别,因为它符合基于效率的生产力定义(即产出与投入),并与其他类别进行了三次统计分析,以评估它们的相似性。结果发现,神经行为反应时间、自我报告的生产力和呼叫处理时间的类别与神经行为速度具有统计相似性。本研究有助于为未来的元分析创造一个建设性的研究环境,以了解哪些人类生产力指标可以相互结合。
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