题目
题目

econ_475_120251_244434

数值题

Consider the data on Apple stock prices available on Canvas (apple_stock_price.csv). The data is at daily frequency and covers the period between January 3, 2007 and November 8, 2024. The following figure displays the time-series of apple stock price (in log). Define the training sample as all the information available up to August 1, 2024. Assume the apple stock returns follows a GARCH(1,1) process. More specifically, rt =εt εt∣Ωt−1 ∼N(0,σ 2 t ) σ 2 t =ω+αε 2 t−1 +βσ 2 t−1 where rt=Δlog(Pt). What is the upper bound on the 95% forecast interval for the 1−step ahead forecast of rt?

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思路分析
To determine the upper bound of the 95% forecast interval for the 1-step ahead return rt under a GARCH(1,1) specification, we need to follow the standard conditional-variance forecasting framework. First, restating the model clearly helps: the return rt is modeled as rt = εt, with εt conditional on information Ωt−1 distributed as N(0, σt^2). The conditional variance follows σ^2_t = ω + α ε^2_{t−1} + β σ^2_{t−1}. Key idea: for a 1-step ahead forecast, the conditional mean of rt is zero (E[rt|Ωt−1] = 0) and the 1-step ahead conditional variance is ht+1|t = ω + α ε^2_t + β σ^2_t, where εt and σ^2_t are the most recent observed innovation and conditional va......Login to view full explanation

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