论文标题

水库计算中的运输

Transport in reservoir computing

论文作者

Manjunath, G, Ortega, Juan-Pablo

论文摘要

储层计算系统是使用驱动的动力系统构建的,在该系统中,外部输入可以改变系统的不断发展状态。这些范例用于信息处理,机器学习和计算。在此框架中需要解决的一个基本问题是输入与系统状态之间的统计关系。本文提供了保证驱动系统渐近措施的存在和唯一性的条件,并表明当输入和输出过程赋予了Wasserstein距离时,它们对输入过程的依赖性是连续的。这些发展中的主要工具是将这些不变的度量表征为在这种情况下出现并在本文中进行了大量研究的自然定义的FOIA算子的固定点。这些固定点是通过在驱动系统中易于在示例中易于验证的驱动系统中新引入的随机状态合同性来获得的。可以通过非国家缩减的系统来满足随机状态的合同性,这通常是为了保证储层计算中的回声状态属性的需求。结果,即使不存在Echo State属性,也可能会得到满足。

Reservoir computing systems are constructed using a driven dynamical system in which external inputs can alter the evolving states of a system. These paradigms are used in information processing, machine learning, and computation. A fundamental question that needs to be addressed in this framework is the statistical relationship between the input and the system states. This paper provides conditions that guarantee the existence and uniqueness of asymptotically invariant measures for driven systems and shows that their dependence on the input process is continuous when the set of input and output processes are endowed with the Wasserstein distance. The main tool in these developments is the characterization of those invariant measures as fixed points of naturally defined Foias operators that appear in this context and which have been profusely studied in the paper. Those fixed points are obtained by imposing a newly introduced stochastic state contractivity on the driven system that is readily verifiable in examples. Stochastic state contractivity can be satisfied by systems that are not state-contractive, which is a need typically evoked to guarantee the echo state property in reservoir computing. As a result, it may actually be satisfied even if the echo state property is not present.

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