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Globally Convergent Dual MAP LP Relaxation Solvers using Fenchel-Young Margins

机译:使用Fenchel-Young Margins实现全球收敛的双MAP LP松弛求解器

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While finding the exact solution for the MAP inference problem is intractable for many real-world tasks, MAP LP relaxations have been shown to be very effective in practice. However, the most efficient methods that perform block coordinate descent can get stuck in sub-optimal points as they are not globally convergent. In this work we propose to augment these algorithms with an e-descent approach and present a method to efficiently optimize for a descent direction in the sub-differential using a margin-based formulation of the Fenchel-Young duality theorem. Furthermore, the presented approach provides a methodology to construct a primal optimal solution from its dual optimal counterpart. We demonstrate the efficiency of the presented approach on spin glass models and protein interaction problems and show that our approach outperforms state-of-the-art solvers.
机译:虽然找到许多实际任务难以解决的MAP推理问题的精确解决方案,但已证明MAP LP松弛在实践中非常有效。但是,执行块坐标下降的最有效方法可能会卡在次优点,因为它们不是全局收敛的。在这项工作中,我们建议使用e-下降方法扩充这些算法,并提出一种使用基于Fenchel-Young对偶定理的基于余量的公式有效地优化次微分中的下降方向的方法。此外,所提出的方法提供了一种从对偶最优对等物构造原始最优解的方法。我们证明了所提出的方法在旋转玻璃模型和蛋白质相互作用问题上的效率,并表明我们的方法优于最先进的求解器。

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