Asymptotic Optimality of Sequential Designs for Estimation Kamel
نویسنده
چکیده
This paper is concerned with the problem of allocating a fixed number of trials between K independent populations from the exponential family, in order to estimate a linear combination of the means wth squared error loss. Introducing independent conjugate priors, a batch sequential procedure is proposed and compared wth the opnmal.
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