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julietwithagun · 2018年04月25日

问一道题:NO.PZ201709270100000502 第2小题 [ CFA II ]

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问题如下图:

    

选项:

A.

B.

C.

解释:

请问答案里的 b0/(1- b1) = 0/1 = 0是怎么得到的呢?为什么等于0可以定是stationary的呢

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已采纳答案

品职辅导员_小明 · 2018年04月25日

你看表一,关于b0和b1的T统计量分别是-1.296和0.4504,可以看出来绝对值都是小于1.98的,所以是落在了接受域里,也就是接受原假设,即bo=0,b1=0,那么这个方程最后就是yt=残差项,因为残差项的假设有残差的均值,方差和协方差都是不变的,所以yt满足均值=0,方差和协方差都是恒定的,所以是平稳的序列。

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