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Knowledge source strategy and enterprise innovation performance: dynamic analysis based on machine learning

机译:知识源战略与企业创新绩效:基于机器学习的动态分析

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By employing ergodic theory and applying the most advanced machine-leaning methods, this study exploits the rules of multi-dimensional, phased and non-linear dynamic evolution between the breadth and depth of knowledge sources and the innovation performance. The following conclusions are obtained. First, regarding explorative innovation, when both the breadth and depth of the knowledge source are at a low level, the enhancement of the breadth of the knowledge source may rapidly lift explorative innovation performance; when the knowledge source is at a high level, the theory of 'ambidexterity balance' is more applicable to find a balance between the breadth and the depth of the knowledge source for the enhancement of explorative innovation performance. Second, in terms of exploitative innovation, 'ambidexterity balance' theory can be applied at all levels. In other words, the balance of the breadth and the depth of the knowledge sources greatly enhances the exploitative innovation performance.
机译:通过运用遍历理论和最先进的机器学习方法,本研究利用了知识资源的广度和深度与创新绩效之间的多维,分阶段和非线性动态演化规律。得到以下结论。首先,关于探索性创新,当知识源的广度和深度都处于较低水平时,知识源广度的提高可能会迅速提升探索性创新的绩效;当知识来源处于较高水平时,“灵巧性平衡”理论更适用于在知识来源的广度和深度之间寻找平衡,以增强探索性创新绩效。其次,就开发创新而言,“灵活性平衡”理论可以应用于所有层面。换句话说,知识来源的广度和深度的平衡极大地提高了开发创新的绩效。

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