为可解释的数据不可知分类设计Shapelets

Riccardo Guidotti, A. Monreale
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引用次数: 2

摘要

时间序列shapelets是一类具有代表性的判别子序列,利用其与时间序列的相似性可以成功地解决时间序列分类问题。文献表明,采用基于时间序列shapelets的分类模型的人工智能(AI)系统具有可解释性、准确性和显著的速度。因此,为了设计一种与数据无关且可解释的分类方法,在本文中,我们首先将shapelets的概念扩展到不同类型的数据,即图像、表格和文本数据。然后,基于这种扩展的shapelets概念,我们提出了一种可解释的数据无关分类方法。由于shapelets的发现可能非常耗时,特别是对于比时间序列更复杂的数据类型,因此我们利用原型的概念来寻找候选shapelets,并减少寻找解决方案所需的时间和shapelets的方差。在不同类型的数据集上进行的大量实验表明,该方法返回的基于数据不可知原型的shapelets实现了快速、准确和稳定的可解释分类。此外,我们展示并证明了shapelets可以作为可解释的AI方法的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing Shapelets for Interpretable Data-Agnostic Classification
Time series shapelets are discriminatory subsequences which are representative of a class, and their similarity to a time series can be used for successfully tackling the time series classification problem. The literature shows that Artificial Intelligence (AI) systems adopting classification models based on time series shapelets can be interpretable, more accurate, and significantly fast. Thus, in order to design a data-agnostic and interpretable classification approach, in this paper we first extend the notion of shapelets to different types of data, i.e., images, tabular and textual data. Then, based on this extended notion of shapelets we propose an interpretable data-agnostic classification method. Since the shapelets discovery can be time consuming, especially for data types more complex than time series, we exploit a notion of prototypes for finding candidate shapelets, and reducing both the time required to find a solution and the variance of shapelets. A wide experimentation on datasets of different types shows that the data-agnostic prototype-based shapelets returned by the proposed method empower an interpretable classification which is also fast, accurate, and stable. In addition, we show and we prove that shapelets can be at the basis of explainable AI methods.
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