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首页> 外文期刊>IEICE Transactions on fundamentals of electronics, communications & computer sciences >Multi-Domain Adaptive Learning Based on Feasibility Splitting and Adaptive Projected Subgradient Method
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Multi-Domain Adaptive Learning Based on Feasibility Splitting and Adaptive Projected Subgradient Method

机译:Multi-Domain Adaptive Learning Based on Feasibility Splitting and Adaptive Projected Subgradient Method

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摘要

We propose the multi-domain adaptive learning that enables us to find a point meeting possibly time-varying specifications simultaneously in multiple domains, e.g. space, time, frequency, etc. The novel concept is based on the idea of feasibility splitting - dealing with feasibility in each individual domain. We show that the adaptive projected subgradient method (Yamada, 2003) realizes the multi-domain adaptive learning by employing (ⅰ) a projected gradient operator with respect to a 'fixed' proximity function reflecting the time-invariant specifications and (ⅱ) a subgradient projection with respect to 'time-varying' objective functions reflecting the time-varying specifications. The resulting algorithm is suitable for real-time implementation, because it requires no more than metric projections onto closed convex sets each of which accommodates the specification in each domain. A convergence analysis and numerical examples are presented.

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