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Minimizing Sparse High-Order Energies by Submodular Vertex-Cover

机译:通过次模块顶点覆盖,将稀疏的高阶能量最小化

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Inference in high-order graphical models has become important in recent years. Several approaches are based, for example, on generalized message-passing, or on transformation to a pairwise model with extra 'auxiliary' variables. We focus on a special case where a much more efficient transformation is possible. Instead of adding variables, we transform the original problem into a comparatively small instance of submodular vertex-cover. These vertex-cover instances can then be attacked by existing algorithms (e.g. belief propagation, QPBO), where they often run 4-15 times faster and find better solutions than when applied to the original problem. We evaluate our approach on synthetic data, then we show applications within a fast hierarchical clustering and model-fitting framework.
机译:近年来,在高阶图形模型中进行推理已变得很重要。几种方法都基于,例如,通用消息传递或基于具有额外“辅助”变量的成对模型的转换。我们专注于一种特殊情况,在这种情况下,可以进行更有效的转换。无需添加变量,我们将原始问题转换为子模块顶点覆盖的较小实例。然后,这些顶点覆盖实例会受到现有算法(例如信念传播,QPBO)的攻击,它们在运行时通常比应用于原始问题的速度快4到15倍,并且找到了更好的解决方案。我们评估综合数据的方法,然后在快速的层次聚类和模型拟合框架中展示应用程序。

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