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Sea Water Pollution Assessment Based on Ensemble of Classifiers

机译:基于分类器组合的海水污染评估

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This paper studies the problem of evaluating pollution for a number of water quality variables, based on measurements from under-water sensors. It is a common strategy in water quality assessment to attempt to select the most accurate classifier to predict the class of the particular test samples. This approach reflects the reasonable belief that enhanced classifier of basic dataset can be used to improve assessment modeling. However, nature is complex, and even the most detailed classification model is extremely simple in comparison. At some point, additional detail exceeds our ability to assess and predict water pollution with reasonable error levels. In those situations, an attractive alternative may be to dynamically select most suitable set of classifiers to label the test samples. This viewpoint is the basis for consideration of selection of classifier ensemble for water pollution assessment and prediction. It is shown theoretically and experimentally that choosing the set of classifiers, from a population of high accurate classifiers, with lowest inaccuracy among its members leads to increase the level of confidence of classification, consequently, increasing the generalization performance. Experimental results provide interesting insights on the predictability of the water quality and the performance of our method comparing with support vector machine classifier.
机译:本文基于水下传感器的测量结果,研究了对许多水质变量进行污染评估的问题。尝试选择最准确的分类器来预测特定测试样品的分类是水质评估中的常见策略。这种方法反映了一种合理的信念,即可以使用基本数据集的增强分类器来改进评估模型。但是,性质很复杂,即使比较,最详细的分类模型也非常简单。在某些时候,更多细节超出了我们以合理的误差水平评估和预测水污染的能力。在那些情况下,一个有吸引力的替代方案可能是动态选择最合适的分类器集来标记测试样本。该观点是考虑选择分类器集成进行水污染评估和预测的基础。从理论上和实验上表明,从一组高准确度的分类器中选择分类器集,其成员之间的不准确性最低,这会提高分类的置信度,从而提高泛化性能。与支持向量机分类器相比,实验结果为水质的可预测性和我们方法的性能提供了有趣的见解。

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