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SMU SOE Seminar (Nov 1, 2017): Inference for the Mean

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TOPIC: 

INFERENCE FOR THE MEAN

Consider inference about the mean of a population with finite variance, based on an i.i.d. sample. The usual t-statistic yields correct inference in large samples, but heavy tails induce poor small sample behavior. This paper combines extreme value theory for the smallest and largest observations with a normal approximation for the t-statistic of a truncated sample to obtain more accurate inference. This alternative approximation is shown to provide a refinement over the standard normal approximation to the full sample t-statistic under more than two but less than three moments, while the bootstrap does not. Small sample simulations suggest substantial size improvements over the bootstrap.

 

Keywords: Bootstrap, T-statistic, Low-Frequency Econometrics
 

Click here to view his CV.

 

 

 

Ulrich Mueller

Princeton University

Econometrics

1 November 2017 (Wednesday)

4pm - 5.30pm

Meeting Room 5.1, Level 5
School of Economics 
Singapore Management University
90 Stamford Road
Singapore 178903