Bias reduction using stochastic approximation


Autoria(s): Leung, Denis Heng-Yan; Wang, You-Gan
Data(s)

01/03/1998

Resumo

The paper studies stochastic approximation as a technique for bias reduction. The proposed method does not require approximating the bias explicitly, nor does it rely on having independent identically distributed (i.i.d.) data. The method always removes the leading bias term, under very mild conditions, as long as auxiliary samples from distributions with given parameters are available. Expectation and variance of the bias-corrected estimate are given. Examples in sequential clinical trials (non-i.i.d. case), curved exponential models (i.i.d. case) and length-biased sampling (where the estimates are inconsistent) are used to illustrate the applications of the proposed method and its small sample properties.

Identificador

http://eprints.qut.edu.au/90619/

Publicador

Wiley-Blackwell Publishing Asia

Relação

DOI:10.1111/1467-842x.00005

Leung, Denis Heng-Yan & Wang, You-Gan (1998) Bias reduction using stochastic approximation. Australian and New Zealand Journal of Statistics, 40(1), pp. 43-52.

Fonte

School of Mathematical Sciences; Science & Engineering Faculty

Palavras-Chave #bias #bootstrapping #jackknife #length-biased data #Robbins-Monro #procedure #sequential analysis #stochastic approximation #stopping time #sequential-tests #jackknife
Tipo

Journal Article