首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >Support vector machine classification on a biased training set: Multi-jet background rejection at hadron colliders
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Support vector machine classification on a biased training set: Multi-jet background rejection at hadron colliders

机译:偏向训练集上的支持向量机分类:强子对撞机上的多喷嘴背景抑制

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This paper describes an innovative way to optimize a multivariate classifier, a Support Vector Machine algorithm, on a problem characterized by a biased training sample. This is possible thanks to the feedback of a signal-background template fit performed on a validation sample and included both in the optimization process and in the input variable selection. The procedure is applied to a real case of interest at hadron collider experiments: the reduction and the estimate of the multi-jet background in the W→eν plus jets data sample collected by the CDF experiment The training samples, partially derived from data and partially from simulation, are described in detail together with the input variables exploited for the classification. At present, the reached performance is better than any other prescription applied to the same final state at hadron collider experiments.
机译:本文介绍了一种创新方法,该方法可以优化以训练样本为特征的问题的多元分类器,即支持向量机算法。这要归功于对验证样本执行的信号背景模板拟合的反馈,该反馈既包括在优化过程中,也包括在输入变量选择中。该程序适用于强子对撞机实验中的一个实际案例:CDF实验收集的W→eνplus喷气机数据样本中多喷气机本底的减少和估计训练样本,部分源自数据,部分源自来自仿真的详细描述,以及用于分类的输入变量。目前,所达到的性能优于强子对撞机实验中应用于相同最终状态的任何其他处方。

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