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Adaptive multitask network based on maximum correntropy learning algorithm

机译:基于最大熵学习算法的自适应多任务网络

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摘要

Adaptive networks solve distributed optimization problems in which all agents of the network are interested to collaborate with their neighbors to learn a similar task. Collaboration is useful when all agents seek a similar task. However, in many applications, agents may belong to different clusters that seek dissimilar tasks. In this case, nonselective collaboration will lead to damaging results that are worse than noncooperative solution. In this paper, we contribute in problems that several clusters of interconnected agents are interested in learning multiple tasks. To address multitask learning problem, we consider an information theoretic criterion called correntropy in a distributed manner providing a novel adaptive combination policy that allows agents to learn which neighbors they should cooperate with and which other neighbors they should reject. In doing so, the proposed algorithm enables agents to recognize their clusters and to achieve improved learning performance compared with noncooperative strategy. Stability analysis in the mean sense and also a closed-form relation determining the network error performance in steady-state mean-square-deviation is derived. Simulation results illustrate the theoretical findings and match well with theory.
机译:自适应网络解决了分布式优化问题,在该问题中,网络的所有代理都希望与其邻居协作以学习类似的任务。当所有座席都寻求类似任务时,协作非常有用。但是,在许多应用程序中,代理可能属于寻求不同任务的不同群集。在这种情况下,非选择性协作将导致破坏性结果,该结果要比非合作解决方案更糟。在本文中,我们提出了几个相互关联的代理集群对学习多个任务感兴趣的问题。为了解决多任务学习问题,我们考虑了一种分布式的信息理论标准,称为信息熵,该信息理论提供了一种新颖的自适应组合策略,该策略允许代理了解他们应该与哪些邻居合作以及应该拒绝哪些其他邻居。通过这样做,与非合作策略相比,所提出的算法使代理能够识别其集群并获得改进的学习性能。推导了均值的稳定性分析以及确定稳态均方差时网络错误性能的闭合形式关系。仿真结果说明了理论发现并与理论相吻合。

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