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jKarma: a Highly-Modular Framework for Pattern-Based Change Detection on Evolving Data (Discussion Paper)

机译:JKarma:在不断发展的数据上的基于模式的变更检测的高模块化框架(讨论纸)

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Pattern-based change detection (PBCD) describes a class of change detection algorithms for evolving data. Contrary to conventional solutions, PBCD seeks changes exhibited by the patterns over time and therefore works on an abstract form of the data, which prevents the search for changes on the raw data. Moreover, PBCD provides arguments on the validity of the results because patterns mirror changes occurred with any form of evidence. However, the existing solutions differ on data representation, mining algorithm and change identification strategy, which we can deem as main modules of a general architecture, so that any PBCD task could be designed by accommodating custom implementations for those modules. This is what we propose in this paper through jKarma, a highly-modular framework for designing and performing PBCD.
机译:基于模式的变化检测(PBCD)描述了一类改变检测算法,用于不断发展数据。 与传统解决方案相反,PBCD寻求随着时间的推移所呈现的变化,因此在数据的抽象形式上工作,这可以防止搜索原始数据的更改。 此外,PBCD提供了关于结果的有效性的论据,因为模式镜像发生变化以任何形式的证据发生。 但是,现有解决方案对数据表示,挖掘算法和更改识别策略不同,我们可以认为是常规架构的主要模块,以便通过适应这些模块的自定义实现来设计任何PBCD任务。 这就是我们通过JKARMA提出本文,这是一个高度模块化的设计和执行PBCD的框架。

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