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The Next Evolution of MDE: A Seamless Integration of Machine Learning into Domain Modeling

机译:mDE的下一个发展:机器学习与领域建模的无缝集成

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摘要

Machine learning algorithms are designed to resolve unknown behaviors by extracting commonalities over massive datasets. Unfortunately, learning such global behaviors can be inaccurate and slow for systems composed of heterogeneous elements, which behave very differently, for instance as it is the case for cyber-physical systems andInternet of Things applications. Instead, to make smart deci-sions, such systems have to continuously refine the behavior on a per-element basis and compose these small learning units together. However, combining and composing learned behaviors from different elements is challenging and requires domain knowledge. Therefore, there is a need to structure and combine the learned behaviors and domain knowledge together in a flexible way. In this paper we propose to weave machine learning into domain modeling. More specifically, we suggest to decompose machine learning into reusable, chainable, and independently computable small learning units, which we refer to as microlearning units.These micro learning units are modeled together with and at the same level as the domain data. We show, based on asmart grid case study, that our approach can be significantly more accurate than learning a global behavior, while the performance is fast enough to be used for live learning.
机译:机器学习算法旨在通过提取大量数据集的共性来解决未知行为。不幸的是,对于由异类元素组成的系统而言,学习此类全局行为可能是不准确的,而且速度很慢,例如,网络物理系统和物联网应用就是这种情况。相反,为了做出明智的决策,此类系统必须在每个元素的基础上不断完善行为并将这些小的学习单元组合在一起。但是,将不同元素的学习行为进行组合和组合是一项挑战,需要领域知识。因此,需要以一种灵活的方式将学习到的行为和领域知识结构化并结合在一起。在本文中,我们建议将机器学习编织到领域建模中。更具体地说,我们建议将机器学习分解为可重用,可链接和可独立计算的小型学习单元,我们将其称为微学习单元。这些微学习单元与域数据一起建模,并且与域数据处于同一级别。根据asmart网格案例研究,我们显示,与学习全局行为相比,我们的方法可以显着提高准确性,同时性能足以用于实时学习。

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