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doubletruelibra · 2018年12月22日

问一道题:NO.PZ201709270100000502 第2小题

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请问一个基础理解困惑:按照本题解题思路,对于时间序列Xt=b0+b1Xt-1+et, 同样可以用t检验来判断它的系数b0,b1是否显著不等于零,从而判断Xt这个回归是否成立,对吗?也就是t检验判断系数是否显著不等于零从而判断回归是否有效这个方法不仅适用于线性回归,而且适用于时间序列AR?还是这样的AR根本就是一种特殊的线性回归?


问题如下图:

    

选项:

A.

B.

C.

解释:



1 个答案
已采纳答案

菲菲_品职助教 · 2018年12月28日

同学你好,用t检验来判断对这几个模型都是适用的哦。你的理解是正确的。

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