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Shepard Interpolation Neural Networks with K-Means: A Shallow Learning Method for Time Series Classification

机译:Shepard插值神经网络与K均值:时间序列分类的一种浅层学习方法

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Deep neural network architectures have redefined benchmark machine learning challenges, from classification to anomaly detection, and have become popular in the time series domain. However, deep learning techniques fall short in time series classification (TSC) because the explainability of deep learning is still abstract, and the training requires vast amounts of data, which utilizes computational power. These obstacles are not the case with Shepard Interpolation Neural Networks (SINN), a shallow learning architecture approach for deep learning tasks. Based on a statistical interpolation technique rather than a biological brain, SINN require little data to achieve high accuracy in its training. Additionally, its explainability can be equated to feature mapping onto hyper surfaces in the feature space. Our proposed algorithm outperforms the other state-of-the-art algorithms on the popular UCR time series classification benchmark data set and outperforms LSTMs on data sets which have significantly smaller training data than testing.
机译:深度神经网络架构已经重新定义了基准机器学习的挑战,从分类到异常检测,并在时间序列领域变得越来越流行。但是,深度学习技术在时间序列分类(TSC)中欠缺,因为深度学习的可解释性仍然是抽象的,并且训练需要大量数据,这利用了计算能力。这些障碍对于Shepard插值神经网络(SINN)而言并非如此,这是一种用于深度学习任务的浅层学习架构方法。基于统计插值技术而不是生物大脑,SINN需要很少的数据来实现其训练的高精度。此外,其可解释性可以等同于将特征映射到特征空间中的超曲面上。我们提出的算法在流行的UCR时间序列分类基准数据集上优于其他最新算法,并且在训练数据比测试数据小得多的数据集上胜过LSTM。

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