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Explainable Time Series Tweaking via Irreversible and Reversible Temporal Transformations

机译:通过不可逆转和可逆的时间转换,可说明的时间序列调整

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Time series classification has received great attention over the past decade with a wide range of methods focusing on predictive performance by exploiting various types of temporal features. Nonetheless, little emphasis has been placed on interpretability and explainability. In this paper, we formulate the novel problem of explainable time series tweaking, where, given a time series and an opaque classifier that provides a particular classification decision for the time series, we want to find the minimum number of changes to be performed to the given time series so that the classifier changes its decision to another class. We show that the problem is NP-hard, and focus on two instantiations of the problem, which we refer to as reversible and irreversible time series tweaking. The classifier under investigation is the random shapelet forest classifier. Moreover, we propose two algorithmic solutions for the two problems along with simple optimizations, as well as a baseline solution using the nearest neighbor classifier. An extensive experimental evaluation on a variety of real datasets demonstrates the usefulness and effectiveness of our problem formulation and solutions.
机译:时间序列分类在过去十年中受到了极大的关注,通过利用各种类型的时间特征,各种方法专注于预测性能。尽管如此,很少强调令人难以置信和解释性。在本文中,我们制定了可解释的时间序列调整的新问题,其中,给定时间序列和提供时间序列的特定分类决定的不透明分类,我们想找到要执行的最小更改数给定时间序列使分类器将其决定改为另一个类。我们表明,问题是NP - 硬,并专注于解决问题的两个实例化,我们称之为可逆和不可逆转的时间序列调整。在调查中的分类器是随机地形林分类器。此外,我们为两个问题提出了两个算法解决方案以及简单的优化,以及使用最近邻分类的基线解决方案。对各种实际数据集的广泛实验评估展示了我们问题配方和解决方案的有用性和有效性。

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