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An interference-adjusted power learning curve for tasks with cognitive and motor elements

机译:具有认知和电动机元件的任务的干扰调整功率学习曲线

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Production and operations management (POM) uses learning curve (LC) models to determine the length of training sessions for new workers and predicting future task performance. Empirically validated LC parameters provide managers with quantitative information on the effects of the presumed factors behind the learning process. Previous studies considered LC to compose of cognitive and motor curves. Another widely acknowledged but only recently parameterized phenomenon in the POM field is interference, which assumes some loss of information or experience could occur over a learning session. This paper takes a logical step in this line of research by developing an interference-adjusted power LC model, a composite of cognitive and motor elements. This paper accounts for the decay of cognitive and motor memory traces from repetitions to measure the residual (interference-adjusted) experience and capture these phenomena. Three variants of the model are developed that assume power and exponential decay functions and an approximate version of the exponential one. Assembly data representing various forms of an individual learning profile have been used to test the fits of the developed models. In addition to those models, four potential models from the literature were selected for comparison purposes. The results show that the approximate model fits very well exponential learning profile. The findings highlight the confluence of the three phenomena in learning, component (cognitive/motor) learning, interference, and plateauing.
机译:生产和运营管理(POM)使用学习曲线(LC)模型来确定新工人的培训课程的长度,并预测未来的任务表现。经验验证的LC参数提供了具有定量信息的管理人员,了解学习过程背后的假定因子的影响。以前的研究考虑了LC构成认知和电机曲线。另一个广泛认可但只有最近的POM场中的参数化现象是干扰,这假设在学习会话中可能发生一些信息或经验。本文通过开发干扰调整的电力LC模型,认知和电动元件的复合材料来实现这一研究线的逻辑步骤。本文占认知和电机内存痕迹的衰减,重复测量残差(干扰调整)的体验并捕获这些现象。模型的三个变体是开发的,其假设功率和指数衰减函数和近似版本的指数校对函数。已经用于测试各种形式的各种形式的单个学习简档的装配数据来测试开发模型的配合。除了这些模型之外,选择来自文献的四种潜在模型进行比较目的。结果表明,近似模型非常适合指数良好的学习简介。调查结果突出了学习,组成部分(认知/电机)学习,干扰和平台的三种现象的汇合。

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