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首页> 外文期刊>IEEE Transactions on Signal Processing >Joint Bayesian model selection and estimation of noisy sinusoids via reversible jump MCMC
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Joint Bayesian model selection and estimation of noisy sinusoids via reversible jump MCMC

机译:可逆跳跃MCMC的联合贝叶斯模型选择和正弦波估计

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摘要

In this paper, the problem of joint Bayesian model selection and parameter estimation for sinusoids in white Gaussian noise is addressed. An original Bayesian model is proposed that allows us to define a posterior distribution on the parameter space. All Bayesian inference is then based on this distribution. Unfortunately, a direct evaluation of this distribution and of its features, including posterior model probabilities, requires evaluation of some complicated high-dimensional integrals. We develop an efficient stochastic algorithm based on reversible jump Markov chain Monte Carlo methods to perform the Bayesian computation. A convergence result for this algorithm is established. In simulation, it appears that the performance of detection based on posterior model probabilities outperforms conventional detection schemes.
机译:本文针对白高斯噪声中正弦曲线的联合贝叶斯模型选择和参数估计问题进行了研究。提出了原始的贝叶斯模型,该模型允许我们定义参数空间上的后验分布。然后,所有贝叶斯推断都基于该分布。不幸的是,要对此分布及其特征(包括后验模型概率)进行直接评估,就需要对一些复杂的高维积分进行评估。我们基于可逆跳跃马尔可夫链蒙特卡罗方法开发了一种有效的随机算法来执行贝叶斯计算。建立了该算法的收敛结果。在仿真中,似乎基于后验模型概率的检测性能优于常规检测方案。

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