Aggregation algorithms for neural network ensemble construction

P. Granitto, P. F. Verdes, H. Navone, H. Ceccatto
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引用次数: 22

Abstract

How to generate and aggregate base learners to have optimal ensemble generalization capabilities is an important questions in building composite regression/classification machines. We present here an evaluation of several algorithms for artificial neural networks aggregation in the regression settings, including new proposals and comparing them with standard methods in the literature. We also discuss a potential problem with sequential algorithms: the non frequent but damaging selection through their heuristics of particularly bad ensemble members. We show that one can cope with this problem by allowing individual weighting of aggregate members. Our algorithms and their weighted modifications are favorably tested against other methods in the literature, producing a performance improvement on the standard statistical databases used as benchmarks.
神经网络集成构建的聚合算法
如何生成和聚合基学习器以获得最佳的集成泛化能力是构建复合回归/分类机的一个重要问题。我们在这里提出了几种算法的评估人工神经网络聚合在回归设置,包括新的建议,并与文献中的标准方法进行比较。我们还讨论了序列算法的一个潜在问题:通过启发式方法对特别糟糕的集合成员进行非频繁但有害的选择。我们表明,可以通过允许对聚合成员进行单独加权来处理这个问题。我们的算法及其加权修改在文献中与其他方法进行了良好的测试,在用作基准的标准统计数据库上产生了性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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