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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Exploration of classification confidence in ensemble learning
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Exploration of classification confidence in ensemble learning

机译:整体学习中分类信心的探索

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Ensemble learning has attracted considerable attention owing to its good generalization performance. The main issues in constructing a powerful ensemble include training a set of diverse and accurate base classifiers, and effectively combining them. Ensemble margin, computed as the difference of the vote numbers received by the correct class and the another class received with the most votes, is widely used to explain the success of ensemble learning. This definition of the ensemble margin does not consider the classification confidence of base classifiers. In this work, we explore the influence of the classification confidence of the base classifiers in ensemble learning and obtain some interesting conclusions. First, we extend the definition of ensemble margin based on the classification confidence of the base classifiers. Then, an optimization objective is designed to compute the weights of the base classifiers by minimizing the margin induced classification loss. Several strategies are tried to utilize the classification confidences and the weights. It is observed that weighted voting based on classification confidence is better than simple voting if all the base classifiers are used. In addition, ensemble pruning can further improve the performance of a weighted voting ensemble. We also compare the proposed fusion technique with some classical algorithms. The experimental results also show the effectiveness of weighted voting with classification confidence.
机译:集成学习由于其良好的泛化性能而引起了相当大的关注。构建强大的合奏的主要问题包括训练一组多样且准确的基础分类器,并将其有效地结合在一起。合奏余量,是由正确的班级获得的选票数与获得最多票数的另一个班级获得的票数之差计算得出的,被广泛用于解释集成学习的成功。集合边距的此定义未考虑基本分类器的分类置信度。在这项工作中,我们探索了基础分类器的分类置信度对整体学习的影响,并得出了一些有趣的结论。首先,我们基于基本分类器的分类置信度扩展了集合余量的定义。然后,设计一个优化目标,以通过最小化裕度引起的分类损失来计算基本分类器的权重。尝试了几种策略来利用分类的置信度和权重。可以看出,如果使用了所有基本分类器,则基于分类置信度的加权投票将比简单投票更好。另外,合奏修剪可以进一步改善加权投票合奏的性能。我们还将提出的融合技术与一些经典算法进行了比较。实验结果还显示了具有分类置信度的加权投票的有效性。

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