论文标题

长期预测的偏度拉普拉斯光谱混合物内核的高斯工艺

Gaussian Processes with Skewed Laplace Spectral Mixture Kernels for Long-term Forecasting

论文作者

Chen, Kai, van Laarhoven, Twan, Marchiori, Elena

论文摘要

长期预测涉及预测远远超过最后观察的视野。这是一个高实践相关性的问题,例如,公司为了决定昂贵的长期投资。尽管基于光谱混合物内核的高斯工艺(GP)最近取得了进展和成功,但对于这些内核来说,长期预测仍然是一个具有挑战性的问题,因为它们在大范围内呈指数型。这主要是由于他们使用高斯的混合物来模拟光谱密度。通过研究信号(训练部分)信号的傅立叶系数的分布,该信号的特征可以弄清该信号的傅立叶系数的分布,该信号的(训练部分)非平滑,重尾,稀疏和偏斜。这种分布在光谱结构域中的重尾和偏度特征使得在时域中捕获信号的远程协方差。由于这些观察结果,我们提议使用偏斜的拉普拉斯光谱混合物(SLSM)对光谱密度进行建模,这是由于其峰值,稀疏性,非平滑度和较重的尾部特征的偏斜性。通过将反傅立叶变换应用于该光谱密度,我们获得了一个新的GP内核,以进行长期预测。此外,我们将最初用于修剪神经网络的重量的彩票方法调整为GPS,以自动选择核组件的数量。包括多元时间序列在内的广泛实验的结果显示了所提出的SLSM内核对混合成分数量的长期外推和鲁棒性的有益效果。

Long-term forecasting involves predicting a horizon that is far ahead of the last observation. It is a problem of high practical relevance, for instance for companies in order to decide upon expensive long-term investments. Despite the recent progress and success of Gaussian processes (GPs) based on spectral mixture kernels, long-term forecasting remains a challenging problem for these kernels because they decay exponentially at large horizons. This is mainly due to their use of a mixture of Gaussians to model spectral densities. Characteristics of the signal important for long-term forecasting can be unravelled by investigating the distribution of the Fourier coefficients of (the training part of) the signal, which is non-smooth, heavy-tailed, sparse, and skewed. The heavy tail and skewness characteristics of such distributions in the spectral domain allow to capture long-range covariance of the signal in the time domain. Motivated by these observations, we propose to model spectral densities using a skewed Laplace spectral mixture (SLSM) due to the skewness of its peaks, sparsity, non-smoothness, and heavy tail characteristics. By applying the inverse Fourier Transform to this spectral density we obtain a new GP kernel for long-term forecasting. In addition, we adapt the lottery ticket method, originally developed to prune weights of a neural network, to GPs in order to automatically select the number of kernel components. Results of extensive experiments, including a multivariate time series, show the beneficial effect of the proposed SLSM kernel for long-term extrapolation and robustness to the choice of the number of mixture components.

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