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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Partial Optimality and Fast Lower Bounds for Weighted Correlation Clustering
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Partial Optimality and Fast Lower Bounds for Weighted Correlation Clustering

机译:加权相关聚类的局部最优性和快速下界

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Weighted correlation clustering is hard to solve and hard to approximate for general graphs. Its applications in network analysis and computer vision call for efficient algorithms. To this end, we make three contributions: We establish partial optimality conditions that can be checked efficiently, and doing so recursively solves the problem for series-parallel graphs to optimality, in linear time. We exploit the packing dual of the problem to compute a heuristic, but non-trivial lower bound faster than that of a canonical linear program relaxation. We introduce a re-weighting with the dual solution by which efficient local search algorithms converge to better feasible solutions. The effectiveness of our methods is demonstrated empirically on a number of benchmark instances.
机译:加权相关聚类很难解决,也很难对一般图形进行近似。它在网络分析和计算机视觉中的应用要求高效的算法。为此,我们做出了三点贡献:我们建立了可以有效检查的局部最优性条件,然后递归地解决了在线性时间内将串联-平行图最优化的问题。我们利用问题的压缩对偶来计算启发式但非平凡的下界,其速度比规范线性程序松弛的下限快。我们引入了具有双重解决方案的重新加权,通过该方案,高效的本地搜索算法可以收敛到更好的可行解决方案。我们的方法的有效性在许多基准实例上都得到了经验证明。

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