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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Estimating and Projecting Trends in HIV/AIDS Generalized Epidemics Using Incremental Mixture Importance Sampling.
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Estimating and Projecting Trends in HIV/AIDS Generalized Epidemics Using Incremental Mixture Importance Sampling.

机译:使用增量混合重要性抽样估计和预测HIV / AIDS普遍流行的趋势。

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The Joint United Nations Programme on HIV/AIDS (UNAIDS) has decided to use Bayesian melding as the basis for its probabilistic projections of HIV prevalence in countries with generalized epidemics. This combines a mechanistic epidemiological model, prevalence data, and expert opinion. Initially, the posterior distribution was approximated by sampling-importance-resampling, which is simple to implement, easy to interpret, transparent to users, and gave acceptable results for most countries. For some countries, however, this is not computationally efficient because the posterior distribution tends to be concentrated around nonlinear ridges and can also be multimodal. We propose instead incremental mixture importance sampling (IMIS), which iteratively builds up a better importance sampling function. This retains the simplicity and transparency of sampling importance resampling, but is much more efficient computationally. It also leads to a simple estimator of the integrated likelihood that is the basis for Bayesian model comparison and model averaging. In simulation experiments and on real data, it outperformed both sampling importance resampling and three publicly available generic Markov chain Monte Carlo algorithms for this kind of problem.
机译:联合国艾滋病毒/艾滋病联合规划署(艾滋病规划署)已决定以贝叶斯融合为基础,对流行病普遍的国家中的艾滋病毒流行率进行概率预测。这结合了机械流行病学模型,患病率数据和专家意见。最初,后验分布是通过采样-重要性-重采样来近似的,它易于实现,易于解释,对用户透明,并为大多数国家提供了可接受的结果。但是,对于某些国家/地区来说,这不是有效的计算方法,因为后验分布倾向于集中在非线性脊周围,并且也可以是多峰分布。相反,我们建议采用增量混合重要性抽样(IMIS),以迭代方式建立更好的重要性抽样函数。这保留了采样重要性重采样的简单性和透明性,但是计算效率更高。这也导致了对集成似然的简单估计,这是贝叶斯模型比较和模型平均的基础。在模拟实验和实际数据中,对于此类问题,它的性能均优于采样重要性重采样和三种公开可用的通用马尔可夫链蒙特卡洛算法。

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