智能技术系统中的稀缺数据:原因、特征和含义

Decis. Sci. Pub Date : 2022-12-12 DOI:10.3390/sci4040049
Christoph-Alexander Holst, V. Lohweg
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引用次数: 0

摘要

随着集成传感器的普及,技术系统产生的数据量也在不断增加。即便如此,由于传感器的技术限制、昂贵的标记过程或难以捕捉的罕见概念(如机器故障),数据往往仍然稀缺。数据稀缺性导致关于感兴趣的概念的信息不完整。这篇文章详细介绍了技术系统中稀缺数据的原因和影响。为此,引入了一个类型学来定义不同类型的不完备性。在此基础上,提出并讨论了专门用于处理稀缺数据的机器学习和信息融合方法。论文最后提出了动机,并呼吁进一步研究机器学习和信息融合的结合。
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Scarce Data in Intelligent Technical Systems: Causes, Characteristics, and Implications
Technical systems generate an increasing amount of data as integrated sensors become more available. Even so, data are still often scarce because of technical limitations of sensors, an expensive labelling process, or rare concepts, such as machine faults, which are hard to capture. Data scarcity leads to incomplete information about a concept of interest. This contribution details causes and effects of scarce data in technical systems. To this end, a typology is introduced which defines different types of incompleteness. Based on this, machine learning and information fusion methods are presented and discussed that are specifically designed to deal with scarce data. The paper closes with a motivation and a call for further research efforts into a combination of machine learning and information fusion.
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