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On the Impact of the Metrics Choice in SOM Learning: Some Empirical Results from Financial Data

机译:指标选择对SOM学习的影响:金融数据的一些经验结果

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This paper studies the impact of the metrics choice on the learning procedure of Self Organizing Maps (SOM). In particular, we modified the learning procedure of SOM, by replacing the standard Euclidean norm, usually employed to evaluate the similarity between input patterns and nodes of the map, with the more general Minkowski norms: ‖X‖_P = (∑∣X_i∣~p)~(1/P) , for p ∈ R+. We have then analized how the clus- tering capabilities of SOM are modified when both prenorms (0 < p < 1), and ultrametrics (p 1) are considered. This was done using financial data on the Foreign Exchange Market (FOREX), observed at different time scales (from 1 minute to 1 month). The motivation inside the use of this data domain (financial data) is the relevance of the addressed question, since SOM are often employed to support the decision process of traders. It could be then of interest to know if and how the results of SOM can be driven by changes in the distance metric according to which proximities are evaluated. Our main result is that concentration seems not to be the unique factor affecting the effectiveness of the norms (and hence of the clustering procedure); in the case of financial data, the time scale of observations counts as well.
机译:本文研究了指标选择对自组织图(SOM)学习过程的影响。特别是,我们通过替换标准的欧几里得范数来修改SOM的学习过程,该准则通常用于评估输入模式和地图节点之间的相似性,并使用更通用的Minkowski范数:“ X” _P =(∑∣X_i∣ 〜p)〜(1 / P),对于p∈R +。然后,我们分析了当同时考虑预规范(0

> 1)时,如何修改SOM的集群功能。这是使用外汇市场(FOREX)上的财务数据完成的,该数据在不同的时间范围(从1分钟到1个月)内观察到。使用此数据域(财务数据)的内在动机是所解决问题的相关性,因为SOM通常用于支持交易者的决策过程。然后,可能有必要知道根据评估的邻近度,距离度量的变化是否可以驱动SOM的结果以及如何驱动SOM的结果。我们的主要结果是,集中度似乎不是影响规范(以及群集程序)有效性的唯一因素;对于财务数据,观察的时间尺度也很重要。

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