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MxBoost: Mutual-exclusive Boosting for Online Classification

机译:MxBoost:在线分类的互斥提升

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摘要

In this paper we discuss how to improve classifier ensembles for online classification problems where classification has to be performed quickly. Under the restriction on time and therefore ensemble size, we propose MxBoost (Mutual-exclusive Boosting) based on the heuristic that members of a decision committee should make mistakes mutually exclusively. Theoretical justifications are given to explain the effectiveness of MxBoost. Furthermore, we conduct extensive empirical studies using representative ensemble schemes including One Per Class (OPC) and Error Correcting Output Coding (ECOC). Our experiments show that MxBoost improves the class-prediction accuracy of both OPC and ECOC on all standard and image datasets that we tested while maintaining good runtime performance. Our experiments also show that MxBoost does not suffer from the overfilling problem.
机译:在本文中,我们讨论了如何针对必须快速执行分类的在线分类问题改进分类器集合。在时间和整体规模的限制下,我们基于决策委员会成员应相互独占犯错的试探法,建议使用MxBoost(互斥的Boosting)。给出了理论依据来解释MxBoost的有效性。此外,我们使用代表性的集成方案进行了广泛的实证研究,包括每类一个(OPC)和纠错输出编码(ECOC)。我们的实验表明,MxBoost提高了我们测试的所有标准和图像数据集上的OPC和ECOC的类预测准确性,同时保持了良好的运行时性能。我们的实验还表明,MxBoost不会遭受过度填充问题。

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