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An Empirical Evaluation of Portfolios Approaches for Solving CSPs

机译:求解CSP的投资组合方法的实证评价

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Recent research in areas such as SAT solving and Integer Linear Programming has shown that the performances of a single arbitrarily efficient solver can be significantly outperformed by a portfolio of possibly slower on-average solvers. We report an empirical evaluation and comparison of portfolio approaches applied to Constraint Satisfaction Problems (CSPs). We compared models developed on top of off-the-shelf machine learning algorithms with respect to approaches used in the SAT field and adapted for CSPs, considering different portfolio sizes and using as evaluation metrics the number of solved problems and the time taken to solve them. Results indicate that the best SAT approaches have top performances also in the CSP field and are slightly more competitive than simple models built on top of classification algorithms.
机译:最近在SAT求解和整数线性编程等领域的研究表明,单个任意高效的求解器的性能可以通过可能较慢平均溶剂的组合显着优化。我们举报了应用于约束满足问题的投资组合方法(CSP)的实证评估和比较。我们比较了在SAT字段中使用的方法的现成机器学习算法之上开发的模型,并考虑了CSP,考虑了不同的组合大小并使用作为评估度量的解决问题和解决它们所花费的时间。结果表明,最好的SAT方法也具有顶级性能,也在CSP字段中具有较大的竞争性比在分类算法顶部内置的简单模型更具竞争力。

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