We study the application of the factor graph framework for symbol detection on linear inter-symbol interference channels. Cyclic factor graphs have the potential to yield low-complexity symbol detectors, but are suboptimal if the ubiquitous sum-product algorithm is applied. In this paper, we present and evaluate strategies to improve the performance of cyclic factor graph-based symbol detection algorithms by means of neural enhancement. In particular, we apply neural belief propagation as an effective way to counteract the effect of cycles within the factor graph. We further propose the application and optimization of a linear preprocessor of the channel output. By modifying the observation model, the preprocessing can effectively change the underlying factor graph, thereby significantly improving the detection performance as well as reducing the complexity.
翻译:我们研究系数图表框架在线性间符号干扰信道中检测符号的应用情况。循环系数图表有可能产生低复杂度符号探测器,但如果应用无处不在的总产品算法,则不理想。在本文中,我们提出并评价通过神经增强改善环性系数图表符号检测算法的性能的战略。特别是,我们应用神经信仰传播作为抵消系数图内循环效应的有效方法。我们进一步提议应用和优化频道输出线性预处理器。通过修改观察模型,预处理可以有效地改变基本要素图,从而大大改进检测性能并降低复杂性。