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Minimal Distance-Based Generalisation Operators for First-Order Objects

机译:一阶对象的基于距离的最小距离泛化运算符

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Distance-based methods have been a successful family of machine learning techniques since the inception of the discipline. Basically, the classification or clustering of a new individual is determined by the distance to one or more prototypes. From a comprehensibility point of view, this is not especially problematic in propositional learning where prototypes can be regarded as a good generalisation (pattern) of a group of elements. However, for scenarios with structured data, this is no longer the case. In recent work, we developed a framework to determine whether a pattern computed by a generalisation operator is consistent w.r.t. a distance. In this way, we can determine which patterns. can provide a good representation of a group of individuals belonging to a metric space. In this work, we apply this framework to analyse and define minimal distance-based generalisation operators (mg operators) for first-order data. We show that Plotkin's lgg is a mg operator for atoms under the distance introduced by J. Ramon, M. Bruynooghe and W. Van Laer. We also show that this is not the case for clauses with the distance introduced by J. Ramon and M. Bruynooghe. Consequently, we introduce a new mg operator for clauses, which could be used as a base to adapt existing bottom-up methods in ILP.
机译:自该学科诞生以来,基于距离的方法已成为成功的机器学习技术家族。基本上,一个新个体的分类或聚类取决于到一个或多个原型的距离。从可理解性的角度来看,这在命题学习中不是特别有问题,在命题学习中,原型可以看作是一组元素的良好概括(模式)。但是,对于具有结构化数据的方案,情况已不再如此。在最近的工作中,我们开发了一个框架来确定泛化运算符计算出的模式是否一致。一段距离。这样,我们可以确定哪些模式。可以很好地表示属于度量空间的一组个人。在这项工作中,我们将应用此框架来分析和定义一阶数据的基于距离的最小化泛化运算符(mg运算符)。我们表明,在由J. Ramon,M。Bruynooghe和W. Van Laer引入的距离下,Plotkin的lgg是原子的mg算符。我们还表明,对于J. Ramon和M. Bruynooghe引入的具有距离的子句,情况并非如此。因此,我们为子句引入了新的mg运算符,可以将其用作适应ILP中现有的自下而上方法的基础。

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