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The adaptive projected subgradient method constrained by families of quasi-nonexpansive mappings and its application to online learning

机译:拟非扩张映射族约束的自适应投影次梯度方法及其在在线学习中的应用

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摘要

Many online, i.e., time-adaptive, inverse problems in signal processing and machine learning fall under the wide umbrella of the asymptotic minimization of a sequence of nonnegative, convex, and continuous functions. To incorporate a priori knowledge into the design, the asymptotic minimization task is usually constrained on a fixed closed convex set, which is dictated by the available a priori information. To increase versatility toward the usage of the available information, the present manuscript extends the adaptive projected subgradient method by introducing an algorithmic scheme which incorporates a priori knowledge in the design via a sequence of strongly attracting quasinonexpansive mappings in a real Hilbert space. In such a way, the benefits offered to online learning tasks by the proposed method unfold in two ways: (1) the rich class of quasi-nonexpansive mappings provides a plethora of ways to cast a priori knowledge, and (2) by introducing a sequence of such mappings, the proposed scheme is able to capture the time-varying nature of a priori information. The convergence properties of the algorithm are studied, several special cases of the method with wide applicability are shown, and the potential of the proposed scheme is demonstrated by considering an increasingly important online sparse system/signal recovery task.
机译:信号处理和机器学习中的许多在线(即时间自适应)逆问题都落在一系列非负,凸和连续函数的渐近最小化的宽泛范围内。为了将先验知识纳入设计,通常将渐近最小化任务限制在固定的闭合凸集上,这由可用的先验信息决定。为了增加对可用信息的使用的通用性,本手稿通过引入一种算法方案扩展了自适应投影次梯度方法,该算法方案通过在真实希尔伯特空间中通过一系列强烈吸引的拟对映体扩展映射在设计中合并了先验知识。通过这种方式,通过所提出的方法为在线学习任务提供的好处以两种方式展现出来:(1)丰富的拟非扩张映射类提供了过多的方法来投射先验知识;(2)通过引入在这种映射的序列中,所提出的方案能够捕获先验信息的时变性质。研究了算法的收敛性,给出了该方法的几种特殊情况,并通过考虑日益重要的在线稀疏系统/信号恢复任务证明了该方案的潜力。

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