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Regularized Learning with Flexible Constraints

机译:使用灵活的限制学习

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By its very nature, inductive inference performed by machine learning methods is mainly data-driven. Still, the consideration of background knowledge -if available- can help to make inductive inference more efficient and to improve the quality of induced models. Fuzzy set-based modeling techniques provide a convenient tool for making expert knowledge accessible to computational methods. In this paper, we exploit such techniques within the context of the regularization (penalization) framework of inductive learning. The basic idea is to express knowledge about an underlying data-generating model in terms of flexible constraints and to penalize those models violating these constraints. Within this framework, an optimal model is one that achieves an optimal trade-off between fitting the data and satisfying the constraints.
机译:通过其本质,机器学习方法执行的归纳推理主要是数据驱动。尽管如此,考虑背景知识-IF可用 - 可以帮助更高效地进行归纳推理,提高诱导模型的质量。基于模糊的集合建模技术提供了一种方便的工具,用于使专家知识可用于计算方法。在本文中,我们在归纳学习的正规化(惩罚)框架的背景下利用这些技术。基本思想是在灵活的约束方面表达关于底层数据生成模型的知识,并惩罚违反这些约束的模型。在此框架内,最佳模型是在拟合数据和满足约束之间实现最佳权衡的最佳型号。

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