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Dilemma First Search for effortless optimization of NP-hard problems

机译:难题优先搜索,轻松解决NP难题

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To tackle the exponentiality associated with NP-hard problems, two paradigms have been proposed. First, Branch & Bound, like Dynamic Programming, achieve efficient exact inference but requires extensive information and analysis about the problem at hand. Second, meta-heuristics are easier to implement but comparatively inefficient. As a result, a number of problems have been left unoptimized and plain greedy solutions are used. We introduce a theoretical framework and propose a powerful yet simple search method called Dilemma First Search (DFS). DFS exploits the decision heuristic needed for the greedy solution for further optimization. DFS is useful when it is hard to design efficient exact inference. We evaluate DFS on two problems: First, the Knapsack problem, for which efficient algorithms exist, serves as a toy example. Second, Decision Tree inference, where state-of-the-art algorithms rely on the greedy or randomness-based solutions. We further show that decision trees benefit from optimizations that are performed in a fraction of the iterations required by a random-based search.
机译:为了解决与NP难问题有关的指数性,提出了两种范例。首先,类似于动态编程,Branch&Bound实现了有效的精确推断,但需要大量的信息和有关手头问题的分析。其次,元启发法更易于实现,但效率相对较低。结果,许多问题没有得到优化,并且使用了简单的贪婪解决方案。我们介绍了一个理论框架,并提出了一种功能强大但简单的搜索方法,称为困境第一搜索(DFS)。 DFS利用贪婪解决方案所需的决策启发法进行进一步优化。当难以设计有效的精确推断时,DFS很有用。我们对DFS的两个问题进行了评估:首先,存在有效算法的背包问题可以作为一个示例。其次,决策树推理,其中最先进的算法依赖于基于贪婪或随机性的解决方案。我们进一步表明,决策树得益于基于随机搜索所需的部分迭代执行的优化。

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