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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A generalized adaptive ensemble generation and aggregation approach for multiple classifier systems
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A generalized adaptive ensemble generation and aggregation approach for multiple classifier systems

机译:多分类器系统的广义自适应集成生成与聚合方法

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摘要

In this paper, a generalized adaptive ensemble generation and aggregation (GAEGA) method for the design of multiple classifier systems (MCSs) is proposed. GAEGA adopts an "over-generation and selection" Strategy to achieve a good bias-variance tradeoff. In the training phase, different ensembles of classifiers are adaptively generated by fitting the validation data globally with different degrees. The test data are then classified by each of the generated ensembles. The Final decision is made by taking into consideration both the ability of each ensemble to fit the validation data locally and reducing the risk of overfitting. In this paper, the performance of GAEGA is assessed experimentally in comparison with other multiple classifier aggregation methods on 16 data sets. The experimental results demonstrate that GAEGA significantly outperforms the other methods in terms of average accuracy, ranging from 2.6% to 17.6%.
机译:本文提出了一种用于多分类器系统(MCS)设计的通用自适应集成生成与聚集方法(GAEGA)。 GAEGA采用“过度生成和选择”策略来实现良好的偏差-偏差权衡。在训练阶段,通过以不同程度全局拟合验证数据来自适应地生成不同的分类器集合。然后,按每个生成的集合对测试数据进行分类。做出最终决定时要考虑到每个集合在本地拟合验证数据的能力以及降低过度拟合的风险。在本文中,GAEGA的性能是通过与16个数据集上的其他多种分类器聚合方法进行比较而进行实验评估的。实验结果表明,GAEGA的平均准确度从2.6%到17.6%明显优于其他方法。

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