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Classification Based on the Trace of Variables over Time

机译:基于随时间变化的变量的分类

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摘要

To be successful with certain classification problems or knowledge discovery tasks it is not sufficient to look at the available variables at a single point in time, but their development has to be traced over a period of time. It is shown that patterns and sequences of labeled intervals represent a particularly well suited data format for this purpose. An extension of existing classifiers is proposed that enables them to handle this kind of sequential data. Compared to earlier approaches the expressiveness of the pattern language (using Allen et al.'s interval relationships) is increased, which allows the discovery of many temporal patterns common to real-world applications.
机译:要成功完成某些分类问题或知识发现任务,仅在单个时间点上查看可用变量是不够的,但是必须在一段时间内跟踪其发展。已经表明,标记间隔的模式和序列代表了一个非常适合此目的的数据格式。建议对现有分类器进行扩展,使它们能够处理这种顺序数据。与早期方法相比,模式语言(使用Allen等人的区间关系)的表达性得到了提高,这允许发现许多实际应用程序共有的时间模式。

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