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Philosophical grounding and computational formalization for practice based engineering knowledge

机译:基于实践的工程知识的哲学基础和计算形式化

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Michael Polanyi's idea of tacit knowing and Martin Heidegger's concept of pre-theoretical shared practice are presented as providing a strong rationale for the notion of practice based knowledge. Artificial Intelligence (AI) approaches such as Artificial Neural Networks (ANN), Case Based Reasoning (CBR) and Grounded Theory (with Interval Probability Theory) are able to model these philosophical concepts related to practice based knowledge. The AI techniques appropriate for modeling Polanyi's and Heidegger's ideas should be founded more on a connectionist rather than a cognitivist paradigm. Examples from engineering practice are used to demonstrate how the above techniques can capture, structure and make available such knowledge to practitioners.
机译:迈克尔·波兰尼(Michael Polanyi)的默会知识概念和马丁·海德格尔(Martin Heidegger)的前理论共享实践概念被提出,为基于实践的知识概念提供了强有力的依据。诸如人工智能神经网络(ANN),基于案例的推理(CBR)和扎根理论(具有区间概率理论)之类的人工智能方法能够对与基于实践的知识相关的这些哲学概念进行建模。适用于建模波兰尼和海德格尔思想的AI技术应更多地建立在联系主义者而非认知主义范式的基础上。工程实践中的示例用于说明上述技术如何捕获,构造并向从业者提供此类知识。

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