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Temporal knowledge discovery for multivariate time series with enhanced self-organizing maps

机译:具有增强的自组织映射的多元时间序列的时间知识发现

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This paper presents enhanced self-organizing maps (SOM) for exploratory multivariate time series analysis in the context of temporal data mining. The main idea lies in an adequate combination of approaches with SOM for temporal processing. It is part of a recently developed method that introduces several abstraction levels for temporal knowledge conversion. The method provides a conversion of discovered temporal patterns in multivariate time series with enhanced SOM into a linguistic knowledge representation, in form of temporal grammatical rules. This method was successfully applied to a problem in medicine. Even some previously unknown knowledge was found.
机译:本文提出了增强的自组织映射(SOM),用于在时态数据挖掘的背景下进行探索性多元时间序列分析。主要思想在于将方法与SOM进行适当的组合以进行时间处理。它是最近开发的方法的一部分,该方法引入了多个抽象级别以进行时间知识转换。该方法将具有增强的SOM的多元时间序列中发现的时间模式转换为时间语法规则形式的语言知识表示。该方法已成功应用于医学问题。甚至发现了一些以前未知的知识。

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