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Testing Theories in Particle Physics Using Maximum Likelihood and Adaptive Bin Allocation

机译:使用最大可能性和自适应BIN分配测试粒子物理学中的理论

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We describe a methodology to assist scientists in quantifying the degree of evidence in favor of a new proposed theory compared to a standard baseline theory. The figure of merit is the log-likelihood ratio of the data given each theory. The novelty of the proposed mechanism lies in the likelihood estimations; the central idea is to adaptively allocate histogram bins that emphasize regions in the variable space where there is a clear difference in the predictions made by the two theories. We describe a software system that computes this figure of merit in the context of particle physics, and describe two examples conducted at the Teva-tron Ring at the Fermi National Accelerator Laboratory. Results show how two proposed theories compare to the Standard Model and how the likelihood ratio varies as a function of a physical parameter (e.g., by varying the particle mass).
机译:与标准基线理论相比,我们描述了协助科学家们为计算有利于新的提出理论的证据的方法。优异图是给定每个理论的数据的对数似然比。拟议机制的新颖性在于可能性估算;中心思想是自适应地分配直方图箱,其强调在可变空间中的区域,其中在两个理论中的预测中存在明显差异。我们描述了一种在粒子物理学的上下文中计算该优点的软件系统,并描述了在费米国家加速器实验室的Teva-tron环上进行的两个示例。结果表明,与标准模型的两个建议理论以及如何作为物理参数的函数(例如,通过改变粒子质量)的函数变化。

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