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YQT__ · 2018年02月27日

问一道题:NO.PZ2016062402000020

问题如下图:

    

选项:

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解释:


没有说X和e独立,var(Y)不是应该等于b^2var(X)+var(e)+2cov(bX,e)吗?

1 个答案

orange品职答疑助手 · 2018年02月28日

同学你好,e和X一定是不相关的,这是线性回归模型的假设,可见基础班讲义P127页

如果e和X相关,则说明e还可分解出关于X的一项,那这个模型建立的就有问题了

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NO.PZ2016062402000020问题如下Consir the following lineregression mol: Y=a+bX+e. Suppose a=0.05, b=1.2, SY) = 0.26, anSe) = 0.1. Whis the correlation between X anY?A.0.923B.0.852C.0.7010.462We cfinthe volatility of X from the variancomposition, Equation: V(y)=β2V(x)+V(e)V(y)=\beta^2V(x)+V(e)V(y)=β2V(x)+V(e). This gives V(x)=V(y)−V(e)β2=0.26∧2−0.10∧21.22=0.04V(x)=\frac{V(y)-V(e)}{\beta^2}=\frac{0.26^\wee2-0.10^\wee2}{1.2^2}=0.04V(x)=β2V(y)−V(e)​=1.220.26∧2−0.10∧2​=0.04. Then SX) = 0.2, anp=SX)∗bSY)=1.2×0.20.26=0.923p=\frac{S(X)^\ast b}}{S(Y)}}=\frac{1.2\times0.2}{0.26}=0.923p=SY)SX)∗b​=0.261.2×0.2​=0.923.有点奇怪啊,看了答案也没在讲义找到,相关例题,我这个是刚学完Quant Section2 筛选题库的题看到的

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