论文标题
部分可观测时空混沌系统的无模型预测
Convolutional Filtering on Sampled Manifolds
论文作者
论文摘要
几何数据的可用性提高促使人们需要对以歧管为模型的非欧几里得域进行信息处理。具有理想理论属性(例如不变性和稳定性)的信息处理架构的构建块是卷积过滤。通过歧管扩散序列定义了歧管卷积过滤器,该序列是由拉普拉斯 - 贝特拉米操作员在歧管信号的连续应用中构成的。但是,连续歧管模型只能通过采样离散点并从采样歧管构建近似图形模型来访问。在歧管上的有效线性信息处理需要量化与图形卷积近似歧管卷积时产生的误差。在本文中,我们得出了该近似值的非反应误差,表明采样的歧管上的卷积过滤收敛到连续的歧管滤波。我们的发现进一步证明了导航控制问题。
The increasing availability of geometric data has motivated the need for information processing over non-Euclidean domains modeled as manifolds. The building block for information processing architectures with desirable theoretical properties such as invariance and stability is convolutional filtering. Manifold convolutional filters are defined from the manifold diffusion sequence, constructed by successive applications of the Laplace-Beltrami operator to manifold signals. However, the continuous manifold model can only be accessed by sampling discrete points and building an approximate graph model from the sampled manifold. Effective linear information processing on the manifold requires quantifying the error incurred when approximating manifold convolutions with graph convolutions. In this paper, we derive a non-asymptotic error bound for this approximation, showing that convolutional filtering on the sampled manifold converges to continuous manifold filtering. Our findings are further demonstrated empirically on a problem of navigation control.