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Information value in nonparametric Dirichlet-process Gaussian-process (DPGP) mixture models

机译:非参数Dirichlet过程高斯过程(DPGP)混合模型中的信息值

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This paper presents tractable information value functions for Dirichlet-process Gaussian-process (DPGP) mixture models obtained via collocation methods and Monte Carlo integration. Quantifying information value in tractable closed form is key to solving control and estimation problems for autonomous information-gathering systems. The properties of the proposed value functions are analyzed and then demonstrated by planning sensor measurements so as to minimize the uncertainty in DPGP target models that are learned incrementally over time. Simulation results show that sensor planning based on expected KL divergence outperforms algorithms based on mutual information, particle filters, and randomized methods. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文介绍了通过搭配方法和蒙特卡洛积分获得的狄利克雷过程高斯过程(DPGP)混合模型的易处理信息值函数。以易处理的封闭形式量化信息价值是解决自治信息收集系统的控制和估计问题的关键。分析提出的值函数的属性,然后通过计划传感器测量值进行演示,以最大程度地减少随着时间的推移逐步学习的DPGP目标模型中的不确定性。仿真结果表明,基于预期KL散度的传感器规划优于基于互信息,粒子滤波和随机方法的算法。 (C)2016 Elsevier Ltd.保留所有权利。

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