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Cooljas · 2022年05月10日

画红框的地方分别是怎么得出的啊?

NO.PZ2016062402000020

问题如下:

Consider the following linear regression model: Y=a+bX+e. Suppose a=0.05, b=1.2, SD(Y) = 0.26, and SD(e) = 0.1. What is the correlation between X and Y?

选项:

A.

0.923

B.

0.852

C.

0.701

D.

0.462

解释:

We can find the volatility of X from the variance decomposition Equation: V(y)=β2V(x)+V(e)V(y)=\beta^2V(x)+V(e). This gives V(x)=V(y)V(e)β2=0.2620.1021.22=0.04V(x)=\frac{V(y)-V(e)}{\beta^2}=\frac{0.26^\wedge2-0.10^\wedge2}{1.2^2}=0.04. Then SD(X) = 0.2, and p=SD(X)bSD(Y)=1.2×0.20.26=0.923p=\frac{SD{(X)^\ast b}}{SD{(Y)}}=\frac{1.2\times0.2}{0.26}=0.923.



1 个答案

李坏_品职助教 · 2022年05月10日

嗨,爱思考的PZer你好:


最初的表达式是:y = β * x + e,因为e和x没有相关性,协方差(cov(e,x))也是0,所以V(y) = β^2 * V(x) + V(e)。这里可以利用方差的公式推一下,因为cov是0,所以最后的交叉项就是0,所以只剩下β^2 * V(x) + V(e)了。


β = Cov(x,y) / σ^2 (x),分子的cov(x,y) = σ(x) * σ(y) * ρ,所以分子分母同时约掉σ(x),这样β = σ(y) * ρ / σ(x),所以ρ = σ(x)* β / σ(y)

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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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