Bayesian approximations in randomized response model
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Undergraduate course
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Elsevier B.V.
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Article
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Abstract
Practical Bayesian inference depends upon detailed examination of posterior distribution. When the prior and likelihood are conjugate, this is easily carried out; however, in general, one must resort to numerical approximation. In this paper, our aim is to solve, using MAPLE, the Bayesian paradigm, for a very special data collecting procedure, known as the randomized-response technique. This allows researchers to obtain sensitive information while guaranteeing privacy to respondents. This approach intends to reduce false responses on sensitive questions. Exact methods and approximations will be compared from the accuracy point of view as well as for the computational effort.
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Keywords
Bayesian inference, randomized response, Tierney-Kadane method, MAPLE program
Language
English
Citation
Computational Statistics & Data Analysis. Amsterdam: Elsevier B.V., v. 24, n. 4, p. 401-409, 1997.




