TimeSleuth:一个发现因果和时间规则的工具

K. Karimi, Howard J. Hamilton
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引用次数: 22

摘要

发现系统中的因果关系和时间关系对于理解系统如何工作以及学习控制系统的行为至关重要。TimeSleuth是一个因果关系挖掘器,它使用关联关系作为发现因果关系和时间关系的基础。它是通过在观测数据中引入时间来实现的。TimeSleuth使用C4.5作为关联发现器,通过使用一系列的预处理和后处理技术,使用户可以尝试不同的场景来挖掘因果关系。要挖掘的数据应该顺序地来自单个系统。TimeSleuth使用了标准的决策树构建器,比如C4.5,这使得它超越了目前发现因果关系的主流方法,这种方法是基于条件独立性和因果贝叶斯网络的。本文介绍了TimeSleuth这个工具,并描述了它的功能。它是一种可以处理和解释时间数据的无监督工具。它还可以帮助用户分析属性之间的关系。还有一种区分因果关系和因果关系的机制。因此,鼓励用户进行实验并发现数据之间关系的本质。
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TimeSleuth: a tool for discovering causal and temporal rules
Discovering causal and temporal relations in a system is essential to understanding how it works, and to learning to control the behaviour of the system. TimeSleuth is a causality miner that uses association relations as the basis for the discovery of causal and temporal relations. It does so by introducing time into the observed data. TimeSleuth uses C4.5 as its association discoverer, and by using a series of preprocessing and post-processing techniques to enable the user to try different scenarios for mining causality. The data to be mined should originate sequentially from a single system. TimeSleuth's use of a standard decision tree builder such as C4.5 puts it outside the current mainstream method of discovering causality, which is based on conditional independencies and causal Bayesian networks. This paper introduces TimeSleuth as a tool, and describes its functionality. It is an unsupervised tool that can handle and interpret temporal data. It also helps the user in analyzing the relationships among the attributes. There is also a mechanism to distinguish between causality and acausal relations. The user is thus encouraged to perform experiments and discover the nature of relationships among the data.
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