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A New Cluster Validity Index for Stock Clustering Based on Efficient Frontier

机译:基于有效边界的股票聚类有效性新指标

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Clustering is an unsupervised learning method to discover meaningful information by grouping similar objects together. It is a great challenge to valuate the results of stock clustering. In this paper, we propose a specific index IBEF(Index Based on Efficient Frontier) to evaluate the results of stock clustering based on the concept of efficient frontier. IBEF is defined by the difference between two efficient frontier curves. One curve is built by all stocks and the other curve is built by center stock of each cluster. If the clustering result is good, the two curves are close to each other and IBEF value will be small. Our experiments on different correlation coefficients and clustering methods show that IBEF is a proper validity index comparing with other indexes.
机译:聚类是一种无监督的学习方法,通过将相似的对象分组在一起来发现有意义的信息。评估库存聚类的结果是一个巨大的挑战。在本文中,我们提出了一个特定的指标IBEF(基于有效边界的索引),以基于有效边界的概念评估股票聚类的结果。 IBEF由两条有效边界曲线之间的差异定义。一个曲线是由所有股票建立的,而另一条曲线是由每个集群的中心股票建立的。如果聚类结果良好,则两条曲线彼此接近,IBEF值将很小。我们对不同的相关系数和聚类方法进行的实验表明,与其他指标相比,IBEF是适当的有效性指标。

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