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Effective Local Metric Learning for Water Pipe Assessment

机译:用于水管评估的有效本地度量学习

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Australia's critical water pipes break on average 7,000 times per year. Being able to accurately identify which pipes are at risk of failure will potentially save Australia's water utilities and the community up to $700 million a year in reactive repairs and maintenance. However, ranking these water pipes according to their calculated risk has mixed results due to their different types of attributes, data incompleteness and data imbalance. This paper describes our experience in improving the performance of classifying and ranking these data via local metric learning. Distance metric learning is a powerful tool that can improve the performance of similarity based classifications. In general, global metric learning techniques do not consider local data distributions, and hence do not perform well on complex / heterogeneous data. Local metric learning methods address this problem but are usually expensive in runtime and memory. This paper proposes a fuzzy-based local metric learning approach that out-performs recently proposed local metric methods, while still being faster than popular global metric learning methods in most cases. Extensive experiments on Australia water pipe datasets demonstrate the effectiveness and performance of our proposed approach.
机译:澳大利亚的关键水管平均每年断裂7,000次。能够准确地识别出哪些管道有故障的风险,将可能为澳大利亚的供水公司和社区每年节省高达7亿澳元的被动式维修和保养费用。但是,由于这些水管的不同类型的属性,数据不完整和数据不平衡,因此根据其计算的风险对水管进行排名的结果好坏参半。本文介绍了我们在通过本地度量学习提高这些数据的分类和排名性能方面的经验。距离度量学习是一种功能强大的工具,可以提高基于相似度的分类的性能。通常,全局度量学习技术不考虑本地数据分布,因此在复杂/异构数据上表现不佳。本地度量学习方法解决了此问题,但通常在运行时和内存上开销很大。本文提出了一种基于模糊的局部度量学习方法,该方法优于最近提出的局部度量方法,但在大多数情况下仍比流行的全局度量学习方法快。在澳大利亚水管数据集上进行的大量实验证明了我们提出的方法的有效性和性能。

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