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首页> 外文期刊>Journal of Machine Learnig Research >Stopping Criterion for Boosting-Based Data Reduction Techniques: from Binary to Multiclass Problems
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Stopping Criterion for Boosting-Based Data Reduction Techniques: from Binary to Multiclass Problems

机译:停止基于Boosting的数据约简技术的标准:从二进制到多类问题

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摘要

So far, boosting has been used to improve the quality of moderately accurate learning algorithms, by weighting and combining many of their weak hypotheses into a final classifier with theoretically high accuracy. In a recent work (Sebban, Nock and Lallich, 2001), we have attempted to adapt boosting properties to data reduction techniques. In this particular context, the objective was not only to improve the success rate, but also to reduce the time and space complexities due to the storage requirements of some costly learning algorithms, such as nearest-neighbor classifiers. In that framework, each weak hypothesis, which is usually built and weighted from the learning set, is replaced by a single learning instance. The weight given by boosting defines in that case the relevance of the instance, and a statistical test allows one to decide whether it can be discarded without damaging further classification tasks. In Sebban, Nock and Lallich (2001), we addressed problems with two classes. It is the aim of the present paper to relax the class constraint, and extend our contribution to multiclass problems. Beyond data reduction, experimental results are also provided on twenty-three datasets, showing the benefits that our boosting-derived weighting rule brings to weighted nearest neighbor classifiers.
机译:到目前为止,通过对许多弱假设进行加权并将其组合成具有理论上高精度的最终分类器,Boosting已用于提高中等准确度学习算法的质量。在最近的工作中(Sebban,Nock和Lallich,2001年),我们尝试将增强属性应用于数据约简技术。在这种特定情况下,目标不仅是提高成功率,而且由于某些昂贵的学习算法(例如最近邻分类器)的存储要求,从而减少了时间和空间的复杂性。在该框架中,通常根据学习集构建和加权的每个弱假设都由单个学习实例代替。在这种情况下,通过增强赋予的权重定义了实例的相关性,而统计测试允许人们决定是否可以将其丢弃而不会损害其他分类任务。在Sebban,Nock和Lallich(2001)中,我们解决了两类问题。本文的目的是放松类约束,并将我们的贡献扩展到多类问题。除了减少数据量外,还在23个数据集上提供了实验结果,显示了我们的推导衍生加权规则为加权最近邻分类器带来的好处。

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