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Artificial proto-modelling: building precursors of a next standard model from simplified model results

机译:人工原型模型:从简化模型结果构建下一个标准模型的前体

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A bstract We present a novel algorithm to identify potential dispersed signals of new physics in the slew of published LHC results. It employs a random walk algorithm to introduce sets of new particles, dubbed “proto-models”, which are tested against simplified-model results from ATLAS and CMS (exploiting the SM odel S software framework). A combinatorial algorithm identifies the set of analyses and/or signal regions that maximally violates the SM hypothesis, while remaining compatible with the entirety of LHC constraints in our database. Demonstrating our method by running over the experimental results in the SM odel S database, we find as currently best-performing proto-model a top partner, a light-flavor quark partner, and a lightest neutral new particle with masses of the order of 1.2 TeV, 700 GeV and 160 GeV, respectively. The corresponding global p -value for the SM hypothesis is p _(global) ≈ 0 . 19; by construction no look-elsewhere effect applies.
机译:Bstract我们介绍了一种新的算法,用于识别发表的LHC结果的新物理学的潜在分散信号。 它采用随机步行算法来引入一组新的粒子,被称为“原型”,这是针对阿特拉斯和CMS的简化模型测试(利用SM Odel S软件框架)进行测试。 组合算法识别了最大违反SM假设的分析和/或信号区域的集合,同时与我们的数据库中的整个LHC约束尤其兼容。 通过在SM ODEL S数据库中运行实验结果来展示我们的方法,我们发现目前最好的PRODO模型是顶级合作伙伴,轻型夸克合作伙伴,以及一个最轻的中性新粒子,大量的大量为1.2 TEV,700 GEV和160 GEV。 用于SM假设的相应全局P -Value是P _(全局)≈0。 19; 通过施工,没有外观效应适用。

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