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Meta-Interpretive Learning of Data Transformation Programs

机译:元解释学习数据转换计划

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Data transformation involves the manual construction of large numbers of special-purpose programs. Although typically small, such programs can be complex, involving problem decomposition, recursion, and recognition of context. Building such programs is common in commercial and academic data analytic projects and can be labour intensive and expensive, making it a suitable candidate for machine learning. In this paper, we use the meta-interpretive learning framework (MIL) to learn recursive data transformation programs from small numbers of examples. MIL is well suited to this task because it supports problem decomposition through predicate invention, learning recursive programs, learning from few examples, and learning from only positive examples. We apply Metagol, a MIL implementation, to both semi-structured and unstructured data.We conduct experiments on three real-world datasets: medical patient records, XML mondial records, and natural language taken from ecological papers. The experimental results suggest that high levels of predictive accuracy can be achieved in these tasks from small numbers of training examples, especially when learning with recursion.
机译:数据转换涉及大量专用计划的手动构建。虽然通常很小,但这样的程序可以复杂,涉及问题分解,递归和对上下文的识别。建立此类计划在商业和学术数据分析项目中是常见的,并且可以是劳动密集型和昂贵的,使其成为机器学习的合适候选人。在本文中,我们使用Meta解释性学习框架(MIL)来从少量示例中学习递归数据转换程序。 MIL非常适合这项任务,因为它通过谓词发明,学习递归程序,从少数示例学习,从少数示例中学习来支持问题分解。我们应用METAGOL,MIL实施,以半结构化和非结构化的数据。我们在三个现实世界数据集中进行实验:医疗患者记录,XML蒙版记录和生态论文所采取的自然语言。实验结果表明,在这些任务中可以从少量训练示例中实现高水平的预测准确度,特别是在学习递归时。

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