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Shellfish farm closure prediction and cause identification using machine learning methods

机译:贝类养殖场关闭预测和使用机器学习方法进行原因识别

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Shellfish farms are needed to be closed if they are contaminated during their production as otherwise it may lead to serious health hazard. The authorities monitor a number of water quality variables to check the health of shellfish farms and to decide on the closure of the farms. The research presented in this paper aims to automate this process by developing novel algorithms to identify the cause of closure and also predicting the closure. As the frequency of closure is relatively very small, the labelled data sets are imbalanced in nature. We have developed a novel ensemble feature ranking algorithm that explicitly deals with class imbalance problem and identifies the cause of closure. We have also presented a class balancing ensemble classifier to predict shellfish farm closure. The class balancing ensemble classifier predicts closure/opening with as high as 71.69% accuracy and achieves best balancing act with decision tree base classifier in 75% locations. Rain and salinity are found to be the key causes of closure and the causality depends of the properties of the locations. Crown Copyright (C) 2014 Published by Elsevier B.V. All rights reserved.
机译:如果贝类养殖场在生产过程中受到污染,则必须关闭它们,否则可能导致严重的健康危害。当局监控许多水质变量,以检查贝类养殖场的健康状况,并决定关闭这些养殖场。本文提出的研究旨在通过开发新颖的算法来识别闭合原因并预测闭合来实现此过程的自动化。由于关闭的频率相对很小,因此标记的数据集实际上是不平衡的。我们已经开发了一种新颖的集成特征排名算法,该算法可以明确处理类不平衡问题并确定关闭的原因。我们还提出了一个类平衡集成分类器来预测贝类养殖场的关闭。类平衡集成分类器以高达71.69%的准确性预测关闭/打开,并在75%的位置使用决策树基础分类器实现最佳平衡。雨水和盐分被认为是造成封闭的主要原因,其因果关系取决于地点的性质。官方版权(C)2014,Elsevier B.V.保留所有权利。

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