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APPLYING METROPOLIS-HASTINGS-WITHIN-GIBBS ALGORITHMS FOR DATA DETECTION IN RELAY-BASED COMMUNICATION SYSTEMS

机译:基于中继的通信系统应用Metropolis-Hastings-In-Gibbs算法进行数据检测

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When a Markov Chain Monte Carlo (MCMC) method is applied to solve signal-processing problems, it is commonly implemented using Gibbs sampler. The implementation of Gibbs sampler requires the availability of full conditional probability density functions (pdfs) of all the parameters of interest of a problem. For some problems, however, the full conditional pdfs of all the parameters of interest are not readily available. In such cases, Metropolis-Hastings method can be incorporated within a Gibbs sampler to draw samples from the parameters whose full conditional pdf cannot be analytically determined. This paper demonstrates the application of such an algorithm, known as Metropolis-Hastings-within Gibbs, by considering the problem of joint data detection and channel estimation of a single-hop relay-based communication system. By formulating the signal model of the transmission process in alternative ways, we develop two algorithms for the problem. Moreover, simulation results of the two algorithms are provided to illustrate their effectiveness.
机译:当Markov链蒙特卡罗(MCMC)方法应用于解决信号处理问题时,通常使用GIBBS采样器实现。 GIBBS采样器的实现需要满足问题的所有参数的完全条件概率密度函数(PDF)。然而,对于一些问题,所有感兴趣的参数的完整条件PDF都不容易获得。在这种情况下,Metropolis-Hastings方法可以在GIBBS采样器内结合,以从无法分析地确定其完全条件PDF的参数的样品。本文通过考虑基于单跳中继的通信系统的联合数据检测和信道估计的问题,展示了这种算法的应用,称为GIBBS内的Metropolis-Hastings。通过以替代方式制定传输过程的信号模型,我们为问题开发了两个算法。此外,提供了两种算法的仿真结果以说明它们的有效性。

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