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Self-Organizing Cases to Find Paradigms

机译:自组织案例寻找范例

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Case-based information systems can be seen as lazy machine learning algorithms; the select a number of training instances and then classify unseen cases as the most similar stored instance. One of the main disadvantages of these systems is the high number of patterns retained. In this paper, a new method for extracting just a small set of paradigms from a set of training examples is presented. Additionally, we provide the set of attributes describing the representative examples that are relevant for classification purposes. Our algorithm computes the Kohonen self-organizing maps attached to the training set to then compute the coverage of each map node. Finally, a heuristic procedure selects both the paradigms and the dimensions (or attributes) to be considered when measuring similarity in future classification tasks.
机译:基于案例的信息系统可以看作是懒惰的机器学习算法。选择多个训练实例,然后将看不见的案例分类为最相似的存储实例。这些系统的主要缺点之一是保留了大量的图案。本文提出了一种从一组训练示例中仅提取少量范例的新方法。此外,我们提供了描述与分类目的相关的代表性示例的属性集。我们的算法会计算附在训练集上的Kohonen自组织地图,然后计算每个地图节点的覆盖范围。最后,一个启发式过程选择了在将来的分类任务中测量相似性时要考虑的范式和维度(或属性)。

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