
arXiv: 1202.1467
We design iterative receiver schemes for a generic wireless communication system by treating channel estimation and information decoding as an inference problem in graphical models. We introduce a recently proposed inference framework that combines belief propagation (BP) and the mean field (MF) approximation and includes these algorithms as special cases. We also show that the expectation propagation and expectation maximization algorithms can be embedded in the BP-MF framework with slight modifications. By applying the considered inference algorithms to our probabilistic model, we derive four different message-passing receiver schemes. Our numerical evaluation demonstrates that the receiver based on the BP-MF framework and its variant based on BP-EM yield the best compromise between performance, computational complexity and numerical stability among all candidate algorithms.
Accepted for publication in the Proceedings of 2012 IEEE International Symposium on Information Theory
FOS: Computer and information sciences, Statistics - Machine Learning, Computer Science - Information Theory, Information Theory (cs.IT), Machine Learning (stat.ML)
FOS: Computer and information sciences, Statistics - Machine Learning, Computer Science - Information Theory, Information Theory (cs.IT), Machine Learning (stat.ML)
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