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FIBS: A Generic Framework for Classifying Interval-Based Temporal Sequences

机译:FIB:用于对基于间隔的时间序列进行分类的通用框架

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We study the problem of classifying interval-based temporal sequences (IBTSs). Since common classification algorithms cannot be directly applied to IBTSs, the main challenge is to define a set of features that effectively represents the data such that classifiers can be applied. Most prior work utilizes frequent pattern mining to define a feature set based on discovered patterns. However, frequent pattern mining is computationally expensive and often discovers many irrelevant patterns. To address this shortcoming, we propose the FIBS framework for classifying IBTSs. FIBS extracts features relevant to classification from IBTSs based on relative frequency and temporal relations. To avoid selecting irrelevant features, a filter-based selection strategy is incorporated into FIBS. Our empirical evaluation on eight real-world datasets demonstrates the effectiveness of our methods in practice. The results provide evidence that FIBS effectively represents IBTSs for classification algorithms, which contributes to similar or significantly better accuracy compared to state-of-the-art competitors. It also suggests that the feature selection strategy is beneficial to FIBS's performance.
机译:我们研究了分类基于间隔的时间序列(IBTS)的问题。由于常见的分类算法不能直接应用于IBTS,因此主要挑战是定义一组特征,其有效地表示可以应用分类器的数据。大多数事先工作利用频繁的模式挖掘来定义基于发现模式的特征集。然而,频繁的模式挖掘是计算昂贵的并且通常发现许多无关的模式。为了解决这种缺点,我们向抄袭IBTS提出FIB框架。 FIB基于相对频率和时间关系提取与IBTS分类相关的功能。为避免选择无关的特征,将基于滤波器的选择策略结合到FIB中。我们对八个现实数据集的实证评估展示了我们在实践中的有效性。结果提供了证据,即FIB有效地代表了分类算法的IBTS,这与艺术首字母竞争对手相比,这有助于类似或明显更好的准确性。它还表明,特征选择策略有利于FIB的性能。

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