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首页> 外文期刊>Annals of the Institute of Statistical Mathematics >Optimality of AIC in Inference About Brownian Motion
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Optimality of AIC in Inference About Brownian Motion

机译:关于布朗运动推断的AIC的最优性

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In the usual Gaussian White-Noise model, we consider the problem of estimating the unknown square-integrable drift function of the standard Brownian motion using the partial sums of its Fourier series expansion generated by an orthonormal basis. Using the squared L 2 distance loss, this problem is known to be the same as estimating the mean of an infinite dimensional random vector with l 2 loss, where the coordinates are independently normally distributed with the unknown Fourier coefficients as the means and the same variance. In this modified version of the problem, we show that Akaike Information Criterion for model selection, followed by least squares estimation, attains the minimax rate of convergence.
机译:在通常的高斯白噪声模型中,我们考虑使用标准正交产生的傅立叶级数展开的部分和来估计标准布朗运动的未知平方可积漂移函数的问题。使用平方的L 2 距离损失,已知此问题与估计具​​有l 2 损失的无限维随机矢量的均值相同,其中坐标与未知傅里叶独立地呈正态分布系数作为均值,并且方差相同。在此问题的改进版本中,我们表明,用于模型选择的Akaike信息准则,然后进行最小二乘估计,可以达到最小最大收敛速度。

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