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Pattern Mining in Ultra-High Frequency Order Books with Self-Organizing Maps

机译:具有自组织映射的超高频订购书中的模式挖掘

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This paper addresses the issue of discovering frequent patterns in order book shapes, in the context of the stock market depth, for ultra-high frequency data. It proposes a computational intelligence approach to building frequent patterns by clustering order book shapes with Self-Organizing Maps. An experimental evaluation of the approach proposed on the London Stock Exchange Rebuild Order Book database succeeded with providing a number of characteristic shape patterns and also with estimating probabilities of some typical transitions between shape patterns in the order book.
机译:本文解决了在股票市场深度的背景下发现超高频数据的订单簿形状中频繁出现的模式的问题。它提出了一种计算智能方法,通过将订单簿形状与自组织映射图聚类来构建频繁模式。对伦敦证券交易所重建订单簿数据库中提出的方法进行的实验评估成功提供了许多特征形状图案,并且还估计了订单簿中形状图案之间某些典型过渡的可能性。

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