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Leveraging Domain Knowledge in Multitask Bayesian Network Structure Learning

机译:在多任务贝叶斯网络结构学习中利用领域知识

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摘要

Network structure learning algorithms have aided network discovery in fields such as bioinformatics, neu-roscience, ecology and social science. However, challenges remain in learning informative networks for related sets of tasks because the search space of Bayesian network structures is characterized by large basins of approximately equivalent solutions. Multitask algorithms select a set of networks that are near each other in the search space, rather than a score-equivalent set of networks chosen from independent regions of the space. This selection preference allows a domain expert to see only differences supported by the data. However, the usefulness of these algorithms for scientific datasets is limited because existing algorithms naively assume that all pairs of tasks are equally related. We introduce a framework that relaxes this assumption by incorporating domain knowledge about task-relatedness into the learning objective. Using our framework, we introduce the first multitask Bayesian network algorithm that leverages domain knowledge about the relatedness of tasks. We use our algorithm to explore the effect of task-relatedness on network discovery and show that our algorithm learns networks that are closer to ground truth than naive algorithms and that our algorithm discovers patterns that are interesting.
机译:网络结构学习算法已在诸如生物信息学,神经科学,生态学和社会科学等领域帮助网络发现。但是,由于有关贝叶斯网络结构的搜索空间的特点是具有近似等效解决方案的大型盆地,因此在为相关任务集学习信息网络方面仍然存在挑战。多任务算法选择在搜索空间中彼此靠近的一组网络,而不是从该空间的独立区域中选择的得分相等的一组网络。通过此选择首选项,域专家可以仅查看数据支持的差异。但是,由于现有算法幼稚地假设所有任务对都是同等相关的,因此这些算法对科学数据集的实用性受到了限制。我们引入了一个框架,该框架通过将有关任务相关性的领域知识纳入学习目标来放宽了这一假设。使用我们的框架,我们引入了第一个多任务贝叶斯网络算法,该算法利用了有关任务相关性的领域知识。我们使用我们的算法来探索任务相关性对网络发现的影响,并表明我们的算法学习的网络比朴素算法更接近地面真理,并且我们的算法发现了有趣的模式。

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