论文标题
信号分解使用蒙版近端操作员
Signal Decomposition Using Masked Proximal Operators
论文作者
论文摘要
我们考虑将矢量时间序列信号分解为具有不同特征(例如平滑,周期性,非负或稀疏)的组件的充分研究的问题。我们描述了一个简单而通用的框架,其中组件由损耗函数(包括约束)定义,并且信号分解是通过最小化组件损耗的总和(受约束)来执行的。当每个损耗函数是信号分量密度的负模样的负数时,该框架与最大后验概率(MAP)估计相吻合;但这也包括许多其他有趣的案例。总结和澄清先前的结果,我们提供了两种分布式优化方法来计算分解,这些方法在组件类损失函数是凸的时找到了最佳分解,并且在没有时是良好的启发式方法。这两种方法都仅需要每个组件损耗函数的可能近端操作员,这是对其参数中缺少条目的众所周知近端运算符的概括。两种方法均分布,即分别处理每个组件。我们得出了可用于评估某些损失函数的掩盖近端操作员的拖延方法,据我们所知,这些函数尚未出现在文献中。
We consider the well-studied problem of decomposing a vector time series signal into components with different characteristics, such as smooth, periodic, nonnegative, or sparse. We describe a simple and general framework in which the components are defined by loss functions (which include constraints), and the signal decomposition is carried out by minimizing the sum of losses of the components (subject to the constraints). When each loss function is the negative log-likelihood of a density for the signal component, this framework coincides with maximum a posteriori probability (MAP) estimation; but it also includes many other interesting cases. Summarizing and clarifying prior results, we give two distributed optimization methods for computing the decomposition, which find the optimal decomposition when the component class loss functions are convex, and are good heuristics when they are not. Both methods require only the masked proximal operator of each of the component loss functions, a generalization of the well-known proximal operator that handles missing entries in its argument. Both methods are distributed, i.e., handle each component separately. We derive tractable methods for evaluating the masked proximal operators of some loss functions that, to our knowledge, have not appeared in the literature.