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Impact of Learning Strategies on the Quality of Bayesian Networks: An Empirical Evaluation

机译:学习策略对贝叶斯网络质量的影响:实证评价

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We present results from an empirical evaluation of the impact of Bayesian network structure learning strategies on the learned structures. In particular, we investigate how learning algorithms with different optimality guarantees compare in terms of structural aspects and gener-alisability of the produced network structures. For example, in terms of generalization to unseen testing data, we show that local search algorithms often benefit from a tight constraint on the number of parents of variables in the networks, while exact approaches tend to benefit from looser parent restrictions. Overall, we find that learning strategies with weak optimality guarantees show good performance on synthetic datasets, but, compared to exact approaches, perform poorly on the more "real-world" datasets. The exact approaches, which guarantee to find globally optimal solutions, consistently generalize well to unseen testing data, motivating further work on increasing the robustness and scalability of such algorithmic approaches to Bayesian network structure learning.
机译:我们提出了对贝叶斯网络结构学习策略对学习结构的影响的实证评价结果。特别是,我们调查如何在结构方面和产生的网络结构的结构方面和恒定性方面具有不同优化性的学习算法。例如,在推广到看不见的测试数据方面,我们表明,本地搜索算法往往从在网络变量的家长人数紧约束条件中获益,而确切的方法往往受益于宽松的家长限制。总的来说,我们发现具有弱优化性的学习策略保证在合成数据集中表现出良好的性能,但与完全的方法相比,在更“真实世界”的数据集上表现不佳。确切的方法,保证寻找全球最佳解决方案,一致地概括到未经检测的测试数据,激励进一步努力提高贝叶斯网络结构学习这种算法方法的鲁棒性和可扩展性。

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