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ON DUALITY OF EXPONENTIAL AND LINEAR FORGETTING

机译:关于指数和线性遗忘的对偶性

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Regularized (stabilized) versions of exponential and linear forgetting in parameter tracking are shown to be dual to each other. Both are derived by solving essentially the same Bayesian decision-making problem where Kullback-Leibler divergence is used to measure (quasi)distance between posterior probability distributions of estimated parameters. The type of forgetting depends solely on the order of arguments in Kullback-Leibler divergence. This general view indicates under which conditions one technique is superior to the other. Applied to the case of ARX models, the approach results in a class of regularized (stabilized) forgetting strategies that are naturally robust with respect to poor system excitation.
机译:参数跟踪中的指数遗忘和线性遗忘的正则化(稳定化)版本显示为互为对偶。两者都是通过解决基本相同的贝叶斯决策问题而得出的,在该问题中,使用Kullback-Leibler散度来度量估计参数的后验概率分布之间的(近似)距离。遗忘的类型仅取决于Kullback-Leibler发散中的参数顺序。这种总体观点表明,在哪种条件下,一种技术要优于另一种。应用于ARX模型的情况下,该方法会导致一类正规化(稳定)的遗忘策略,该策略对于不良的系统激励自然具有鲁棒性。

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