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Evaluating Anytime Algorithms for Learning Optimal Bayesian Networks

机译:随时评估学习最佳贝叶斯网络的算法

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Exact algorithms for learning Bayesian networks guarantee to find provably optimal networks. However, they may fail in difficult learning tasks due to limited time or memory. In this research we adapt several anytime heuristic search-based algorithms to learn Bayesian networks. These algorithms find high-quality solutions quickly, and continually improve the incumbent solution or prove its optimality before resources are exhausted. Empirical results show that the anytime window A* algorithm usually finds higher-quality, often optimal, networks more quickly than other approaches. The results also show that, surprisingly, while generating networks with few parents per variable are structurally simpler, they are harder to learn than complex generating networks with more parents per variable.
机译:用于学习贝叶斯网络的精确算法可确保找到可证明的最佳网络。但是,由于时间或内存有限,他们可能无法完成困难的学习任务。在这项研究中,我们采用了几种基于启发式搜索的算法来学习贝叶斯网络。这些算法可快速找到高质量的解决方案,并在资源耗尽之前不断改进现有解决方案或证明其最优性。实验结果表明,与其他方法相比,随时窗口A *算法通常可以更快地找到更高质量的网络(通常是最佳网络)。结果还表明,令人惊讶的是,虽然每个变量具有较少父代的生成网络在结构上更简单,但与每个变量具有较多父代的复杂生成网络相比,它们更难学习。

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