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Learning in design f From characterizing dimensions to working systems

机译:设计中的学习f从表征尺寸到工作系统

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The application of machine learning (ML) to solve practical problems is complex. Only recently, due to the increased promise of ML in solving real problems and the experienced difficulty of their use, has this issue started to attract attention. This difficulty arises from the complexity of learning problems and the large variety of available techniques. In order to understand this complexity and begin to overcome it, it is important to construct a characterization of learning situations. Building on previous work that dealt with the practical use of ML, a set of dimensions is developed, contrated with another recent proposal, and illustrated with a project on the development of a decision-support system for marine propeller design. The general research opportunities that emerge from the development of the dimensions are discussed. Leading toward working systems, a simple model is presented for setting priorities in research and in selecting learning tasks within large projects. Central to the development of the concepts discussed in this paper is their use in future projects and the recording of their successes, limitations, and failures.
机译:机器学习(ML)解决实际问题的应用非常复杂。直到最近,由于ML解决现实问题的希望越来越高,以及使用它们遇到的困难,这个问题才开始引起人们的注意。这种困难源于学习问题的复杂性和各种可用技术。为了理解这种复杂性并开始克服它,构建学习情境的表征很重要。在处理ML实际用途的先前工作的基础上,开发了一组尺寸,与最近的另一项提议相违背,并以开发用于船用螺旋桨设计的决策支持系统的项目为例进行了说明。讨论了因尺寸发展而产生的一般研究机会。引入工作系统,提出了一个简单的模型,用于设置研究的优先级和选择大型项目中的学习任务。本文讨论的概念发展的核心是它们在将来的项目中的使用以及它们的成功,局限和失败的记录。

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