PTCR-Miner: Progressive Temporal Class Rule Mining for Multivariate Temporal Data Classification

Chao-Hui Lee, V. Tseng
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引用次数: 3

Abstract

Recently, multivariate temporal data classification has been widely applied on many fields, such as bio-signals analysis, stocks prediction and weather forecasting. Multivariate temporal data contains hybrid type of attributes like numeric and categorical ones. However, most classification methods proposed in the past researches are not directly applicable to the multivariate temporal data with multiple types. Additionally, no useful and readable rules are provided in the existing methods for advanced classification analysis. In this paper, we proposed a novel algorithm named Progressive Temporal Class Rule Miner (PTCR-Miner) for classification on multivariate temporal data with a rule-based design. Through our algorithm, the classification rules discovered follow the purification concept we defined to be comprehensible and intuitive for general users to use on data classification. A series of experiments were conducted to evaluate our method with a multivariate temporal data simulator. The experimental results showed that PTCR-Miner performs effectively and efficiently on different simulated multivariate temporal datasets. Additionally, a real dataset related to asthma monitoring was also tested and the results showed that our classification mechanism works stably for asthma attack predictions. This means the discovered rules are really helpful and comprehensible for data classification. Furthermore, the rule-based and flexible architecture make PTCR-Miner more applicable to different application areas of multivariate temporal data classification.
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PTCR-Miner:用于多变量时态数据分类的渐进时态类规则挖掘
近年来,多元时间数据分类在生物信号分析、股票预测和天气预报等领域得到了广泛的应用。多变量时态数据包含混合类型的属性,如数字和分类属性。然而,以往研究中提出的大多数分类方法并不直接适用于多类型的多元时间数据。此外,现有的高级分类分析方法没有提供有用的、可读的规则。本文提出了一种基于规则的多变量时态数据分类算法——渐进式时态类规则挖掘算法(PTCR-Miner)。通过我们的算法,发现的分类规则遵循我们定义的净化概念,便于一般用户在数据分类上使用。在多变量时间数据模拟器上进行了一系列实验来评估我们的方法。实验结果表明,PTCR-Miner在不同的模拟多元时间数据集上具有良好的性能。此外,还测试了与哮喘监测相关的真实数据集,结果表明我们的分类机制在哮喘发作预测中稳定地工作。这意味着发现的规则对于数据分类是非常有用和可理解的。此外,基于规则的灵活架构使PTCR-Miner更适用于多元时态数据分类的不同应用领域。
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