首页> 外文会议>Japan Society for Artificial Intelligence(JSAI) Annual Conference 2005; 2005; >Implementing an Integrated Time-Series Data Mining Environment Based on Temporal Pattern Extraction Methods: A Case Study of an Interferon Therapy Risk Mining for Chronic Hepatitis
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Implementing an Integrated Time-Series Data Mining Environment Based on Temporal Pattern Extraction Methods: A Case Study of an Interferon Therapy Risk Mining for Chronic Hepatitis

机译:基于时间模式提取方法的集成时间序列数据挖掘环境的实现:以慢性肝炎干扰素治疗风险挖掘为例

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摘要

In this paper, we present the implementation of an integrated time-series data mining environment. Time-series data mining is one of key issues to get useful knowledge from databases. With mined time-series patterns, users can aware not only positive results but also negative result called risk after their observation period. However, users often face difficulties during time-series data mining process for data preprocessing method selection/construction, mining algorithm selection, and post-processing to refine the data mining process as other data mining processes. It is needed to develop a time-series data mining environment based on systematic analysis of the process. To get more valuable rules for domain experts from a time-series data mining process, we have designed an environment which integrates time-series pattern extraction methods, rule induction methods and rule evaluation methods with active human-system interaction. After implementing this environment, we have done a case study to mine time-series rules from blood and urine biochemical test database on chronic hepatitis patients. Then a physician has evaluated and refined his hypothesis on this environment. We discuss the availability of how much support to mine interesting knowledge for an expert.
机译:在本文中,我们介绍了集成时间序列数据挖掘环境的实现。时间序列数据挖掘是从数据库中获取有用知识的关键问题之一。使用挖掘的时间序列模式,用户不仅可以观察到阳性结果,而且可以在观察期后意识到称为风险的阴性结果。但是,在时序数据挖掘过程中,用户经常会遇到困难,因为它们需要进行数据预处理方法的选择/构造,挖掘算法的选择以及后处理以像其他数据挖掘过程一样完善数据挖掘过程。需要基于对过程的系统分析来开发时间序列数据挖掘环境。为了从时间序列数据挖掘过程中为领域专家获取更有价值的规则,我们设计了一个环境,该环境将时间序列模式提取方法,规则归纳方法和规则评估方法与有效的人机交互集成在一起。实施此环境后,我们进行了案例研究,从慢性肝炎患者的血液和尿液生化测试数据库中挖掘时间序列规则。然后,医师对这种环境进行了评估并完善了他的假设。我们将讨论为专家提供多少支持来挖掘有趣的知识。

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