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Bayesian Estimation of Survival Functions under Stochastic Precedence

机译:随机先验条件下生存函数的贝叶斯估计

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When estimating the distributions of two random variables, X and Y, investigators often have prior information that Y tends to be bigger than X. To formalize this prior belief, one could potentially assume stochastic ordering between X and Y, which implies Pr(X ≤ z) ≥ Pr( Y ≤ z) for all z in the domain of X and Y. Stochastic ordering is quite restrictive, though, and this article focuses instead on Bayesian estimation of the distribution functions of X and Y under the weaker stochastic precedence constraint, Pr(X ≤ Y) ≥ 0.5. We consider the case where both X and Y are categorical variables with common support and develop a Gibbs sampling algorithm for posterior computation. The method is then generalized to the case where X and Y are survival times. The proposed approach is illustrated using data on survival after tumor removal for patients with malignant melanoma.
机译:在估计两个随机变量X和Y的分布时,研究人员通常会获得先验信息,即Y往往大于X。要正式化这一先验信念,可以潜在地假设X和Y之间的随机排序,这意味着Pr(X≤对于X和Y范围内的所有z,z)≥Pr(Y≤z)。但是,随机排序具有很大的限制性,而本文重点是在较弱的随机优先约束下,对X和Y的分布函数进行贝叶斯估计。 ,Pr(X≤Y)≥0.5。我们考虑X和Y都是具有共同支持的分类变量的情况,并开发用于后验计算的Gibbs采样算法。然后将该方法推广到X和Y为生存时间的情况。使用恶性黑色素瘤患者肿瘤切除后的存活数据说明了该方法。

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