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Validation of an algorithm for dynamically diagnosing learning progress and innovation performance at real-time base

机译:实时动态诊断学习进度和创新绩效的算法的验证

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摘要

A dynamic real-time algorithm of Learning Progress Motivation (LPM) is validated for dynamically diag nosing engineers' learning progress and innovation performance at a real-time base in innovation pro cesses. One hundred and three engineers participate in the situated experiments which simulate innovation contexts are motivated by LPM. Subjects' learning progress and innovation performance are converted into quantitative data by LPM algorithm and then represented by a LPM characteristic curve. Through analyzing the LPM characteristic curve and subjects' process-phase records from experiments, the findings show that LPM facilitates continuous learning and innovation through four-phase cycles and the LPM characteristic curve tends to converge toward a steady-state condition in which innovation deactivation takes place. Furthermore, the navigation effect of LPM algorithm is discovered and which enhances subjects' continuous learning and innovation. The LPM Characteristic curve is proved to be a user-friendly visualized tool for diagnosing the status of learning progress and innovation performance in innovation processes.
机译:验证了学习进度动机(LPM)的动态实时算法,可在创新过程中实时实时诊断工程师的学习进度和创新绩效。一百零三名工程师参加了现场实验,这些实验模拟了LPM激发的创新环境。用LPM算法将受试者的学习进度和创新绩效转化为定量数据,然后用LPM特征曲线表示。通过分析LPM特征曲线和实验对象的过程阶段记录,研究结果表明LPM通过四个阶段的循环促进了持续学习和创新,并且LPM特征曲线趋于收敛到稳态状态,在该状态下,创新被停用地点。此外,发现了LPM算法的导航效果,并增强了受试者的持续学习和创新能力。 LPM特征曲线被证明是一种用户友好的可视化工具,用于诊断创新过程中学习进度和创新绩效的状态。

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