Forward and Inverse Approximation Theory for Linear Temporal Convolutional Networks

Hao Jiang, Qianxiao Li
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Abstract

We present a theoretical analysis of the approximation properties of convolutional architectures when applied to the modeling of temporal sequences. Specifically, we prove an approximation rate estimate (Jackson-type result) and an inverse approximation theorem (Bernstein-type result), which together provide a comprehensive characterization of the types of sequential relationships that can be efficiently captured by a temporal convolutional architecture. The rate estimate improves upon a previous result via the introduction of a refined complexity measure, whereas the inverse approximation theorem is new.
线性时间卷积网络的正反逼近理论
我们提出了一个理论分析的近似性质的卷积架构时,应用于时间序列的建模。具体来说,我们证明了一个近似速率估计(jackson型结果)和一个逆近似定理(bernstein型结果),它们共同提供了可以通过时间卷积架构有效捕获的序列关系类型的综合表征。通过引入精细的复杂性度量,速率估计改进了先前的结果,而逆近似定理是新的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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