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Generalisation Operators for Lists Embedded in a Metric Space

机译:度量空间中嵌入的列表的通用运算符

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摘要

In some application areas, similarities and distances are used to calculate how similar two objects are in order to use these measurements to find related objects, to cluster a set of objects, to make classifications or to perform an approximate search guided by the distance. In many other application areas, we require patterns to describe similarities in the data. These patterns are usually constructed through generalisation (or specialisation) operators. For every data structure, we can define distances. In fact, we may find different distances for sets, lists, atoms, numbers, ontologies, web pages, etc. We can also define pattern languages and use generalisation operators over them. However, for many data structures, distances and generalisation operators are not consistent. For instance, for lists (or sequences), edit distances are not consistent with regular languages, since, for a regular pattern such as *a, the covered set of lists might be far away in terms of the edit distance (e.g. bbbbbba and aa). In this paper we investigate the way in which, given a pattern language, we can define a pair of generalisation operator and distance which are consistent. We define the notion of (minimal) distance-based generalisation operators for lists. We illustrate positive results with two different pattern languages.
机译:在某些应用领域中,相似度和距离用于计算两个对象的相似度,以便使用这些度量来找到相关的对象,对一组对象进行聚类,进行分类或执行以该距离为指导的近似搜索。在许多其他应用领域中,我们需要使用模式来描述数据中的相似性。这些模式通常是通过归纳(或专门化)运算符构造的。对于每个数据结构,我们都可以定义距离。实际上,我们可能会发现集合,列表,原子,数字,本体,网页等的不同距离。我们还可以定义模式语言并对其使用归纳运算符。但是,对于许多数据结构,距离和泛化运算符是不一致的。例如,对于列表(或序列),编辑距离与常规语言不一致,因为对于* a之类的常规模式,所覆盖的列表集可能就编辑距离而言距离较远(例如bbbbbba和aa )。在本文中,我们研究了在给定模式语言的情况下,我们可以定义一对一致的广义算子和距离的方法。我们为列表定义(最小)基于距离的泛化运算符的概念。我们用两种不同的模式语言说明了积极的结果。

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