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A comparison of Kernel methods for instantiating case based reasoning systems

机译:实例化基于案例的推理系统的内核方法的比较

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摘要

Instance based reasoning systems and in general case based reasoning systems are normally used in problems for which it is difficult to define rules. Instance based reasoning is the term which tends to be applied to systems where there are a great amount of data (often of a numerical nature). The volume of data in such systems leads to difficulties with respect to case retrieval and matching. This paper presents a comparative study of a group of methods based on Kernels, which attempt to identify only the most significant cases with which to instantiate a case base. Kernels were originally derived in the context of Support Vector Machines which identify the smallest number of data points necessary to solve a particular problem (e.g. regression or classification). We use unsupervised Kernel methods to identify the optimal cases to instantiate a case base. The efficiencies of the Kernel models measured as Mean Absolute Percentage Error are compared on an oceanographic problem.
机译:通常,在难以定义规则的问题中使用基于实例的推理系统和通常基于案例的推理系统。基于实例的推理是一个术语,通常适用于存在大量数据(通常是数字性质)的系统。这种系统中的数据量导致案例检索和匹配方面的困难。本文对基于内核的一组方法进行了比较研究,这些方法试图仅识别出最重要的案例以实例化案例库。内核最初是在支持向量机的上下文中派生的,后者确定解决特定问题(例如回归或分类)所需的最少数据点数。我们使用无监督的内核方法来识别最佳实例以实例化实例库。在海洋问题上比较了以平均绝对百分比误差衡量的内核模型的效率。

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