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Derivation and Demonstration of a New Metric for Multitasking Performance

机译:衍生和演示多任务性能的新度量

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Objective We proposed and demonstrate a theory-driven, quantitative, individual-level estimate of the degree to which cognitive processes are degraded or enhanced when multiple tasks are simultaneously completed. Background To evaluate multitasking, we used a performance-based cognitive model to predict efficient performance. The model controls for single-task performance at the individual level and does not depend on parametric assumptions, such as normality, which do not apply to many performance evaluations. Methods Twenty participants attempted to maintain their isolated task performance in combination for three dual-task and one triple-task scenarios. We utilized a computational model of multiple resource theory to form hypotheses for how performance in each environment would compare, relative to the other multitask contexts. We assessed if and to what extent multitask performance diverged from the model of efficient multitasking in each combination of tasks across multiple sessions. Results Across the two sessions, we found variable individual task performances but consistent patterns of multitask efficiency such that deficits were evident in all task combinations. All participants exhibited decrements in performing the triple-task condition. Conclusions We demonstrate a modeling framework that characterizes multitasking efficiency with a single score. Because it controls for single-task differences and makes no parametric assumptions, the measure enables researchers and system designers to directly compare efficiency across various individuals and complex situations. Application Multitask efficiency scores offer practical implications for the design of adaptive automation and training regimes. Furthermore, a system may be tailored for individuals or suggest task combinations that support productivity and minimize performance costs.
机译:目的我们提出并证明了在同时完成多个任务时认知过程劣化或增强的程度的理论驱动的定量,个性级别估计。背景为评估多任务处理,我们使用基于性能的认知模型来预测有效的性能。单个级别的单任务性能的模型控件,不依赖于参数假设,例如正常性,这不适用于许多性能评估。方法二十名参与者试图将其孤立的任务性能组合于三个双重任务和一个三重任务方案。我们利用多个资源理论的计算模型来形成假设,用于相对于其他多任务上下文比较每个环境中的性能。我们评估了如果在多个会话中的每个任务组合中的高效多任务化模型中的多任务性能在多大程度上分歧。结果在两个会话中,我们发现可变个别任务性能,但多任务效率的一致模式,使得所有任务组合中的缺陷是显而易见的。所有参与者在执行三重任务条件时表现出递减。结论我们展示了一种建模框架,其具有单一分数的多任务效率。因为它控制单任务差异并没有参数假设,因此该措施使研究人员和系统设计人员能够直接比较各个个人和复杂情况的效率。应用程序多任务效率分数为自适应自动化和培训制度设计提供实际意义。此外,可以针对个人或建议支持生产率并最小化性能成本的任务组合来定制系统。

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