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A Note on the Branch-and-Cut Approach to Decoding Linear Block Codes

机译:关于分支剪切法解码线性分组码的注意事项

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Maximum likelihood (ML) decoding of linear block codes can be considered as an integer linear programming (ILP). Since it is an NP-hard problem in general, there are many researches about the algorithms to approximately solve the problem. One of the most popular algorithms is linear programming (LP) decoding proposed by Feldman et al. LP decoding is based on the LP relaxation, which is a method to approximately solve the ILP corresponding to the ML decoding problem. Advanced algorithms for solving ILP (approximately or exactly) include cutting-plane method and branch-and-bound method. As applications of these methods, adaptive LP decoding and branch-and-bound decoding have been proposed by Taghavi et al. and Yang et al., respectively. Another method for solving ILP is the branch-and-cut method, which is a hybrid of cutting-plane and branch-and-bound methods. The branch-and-cut method is widely used to solve ILP, however, it is unobvious that the method works well for the ML decoding problem. In this paper, we show that the branch-and-cut method is certainly effective for the ML decoding problem. Furthermore the branch-and-cut method consists of some technical components and the performance of the algorithm depends on the selection of these components. It is important to consider how to select the technical components in the branch-and-cut method. We see the differences caused by the selection of those technical components and consider which scheme is most effective for the ML decoding problem through numerical simulations.
机译:线性分组码的最大似然(ML)解码可以视为整数线性规划(ILP)。由于一般来说是一个NP难题,因此有很多关于算法的研究可以近似地解决该问题。最流行的算法之一是Feldman等人提出的线性编程(LP)解码。 LP解码基于LP松弛,这是一种近似解决与ML解码问题相对应的ILP的方法。解决ILP(近似或精确)的高级算法包括切面方法和分支定界方法。作为这些方法的应用,Taghavi等人已经提出了自适应LP解码和分支定界解码。和杨等人。解决ILP的另一种方法是分支切割法,它是切割平面法和分支定界法的混合体。分支剪切法被广泛用于解决ILP,但是,它显然不能很好地解决ML解码问题。在本文中,我们证明了分支剪切方法对于ML解码问题肯定有效。此外,分支剪切方法由一些技术组件组成,算法的性能取决于这些组件的选择。重要的是要考虑如何在分支剪切方法中选择技术组件。我们看到了由于选择这些技术组件而引起的差异,并通过数值模拟考虑了哪种方案对ML解码问题最有效。

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