学会公平地对无线链路的质量进行分类

Gregor Cerar, Halil Yetgin, M. Mohorčič, C. Fortuna
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引用次数: 5

摘要

机器学习(ML)已被用于开发越来越精确的无线网络链路质量估计器。然而,关于不平衡数据集上最合适的模型类别、最合适的指标和模型性能的更深入的问题仍然是开放的。在本文中,我们提出了一种新的基于树的链路质量分类器,该分类器既能满足高性能,又能公平地分类少数类,同时训练成本低。我们将基于树的模型与多层感知器非线性模型和两种线性模型(即逻辑回归和支持向量机)在选定的不平衡数据集上进行比较,并使用五种不同的性能指标评估其结果。我们的研究表明:1)非线性模型的总体性能略好于线性模型;2)考虑F1、训练时间和公平性,所提出的非线性树模型产生了最佳的性能权衡;3)仅基于准确性的单指标汇总评估可以隐藏糟糕的、不公平的性能,特别是在少数类上;4)通过特征选择可以提高40%以上的性能,通过重采样可以提高20%以上的性能。从而导致更公平的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Fairly Classify the Quality of Wireless Links
Machine learning (ML) has been used to develop increasingly accurate link quality estimators for wireless networks. However, more in depth questions regarding the most suitable class of models, most suitable metrics and model performance on imbalanced datasets remain open. In this paper, we propose a new tree based link quality classifier that meets high performance and fairly classifies the minority class and, at the same time, incurs low training cost. We compare the tree based model, to a multilayer perceptron non-linear model and two linear models, namely logistic regression and support vector machine, on a selected imbalanced dataset and evaluate their results using five different performance metrics. Our study shows that 1) non-linear models perform slightly better than linear models in general, 2) the proposed non linear tree-based model yields the best performance trade-off considering F1, training time and fairness, 3) single metric aggregated evaluations based only on accuracy can hide poor, unfair performance especially on minority classes, and 4) it is possible to improve the performance on minority classes, by over 40% through feature selection and by over 20% through resampling, therefore leading to fairer classification results.
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