论文标题

仿真辅助无可能的异常检测

Simulation Assisted Likelihood-free Anomaly Detection

论文作者

Andreassen, Anders, Nachman, Benjamin, Shih, David

论文摘要

鉴于缺乏大型强子对撞机(LHC)新粒子发现的证据,因此扩大搜索程序至关重要。已经提出了各种独立于模型的搜索,从而增加了对意外信号的敏感性。这样的搜索通常有两种类型:严重依赖模拟的搜索和完全基于(未标记)数据的搜索。本文介绍了一种混合方法,可以使两种方法中最好。对于在一个已知功能中具有共振的潜在信号,该新方法首先学习一个参数化的重新加权函数,以变形给定的仿真以匹配侧带中的数据。然后将此函数插值到信号区域,然后将重新加权的仅重新仿真模拟用于监督学习以及背景估计。重新持续模拟的背景估计允许用于分类和谐振功能的特征之间的非平凡相关性。使用JET子结构的Dijet搜索用于说明新方法。模拟辅助无可能异常检测(沙拉)的未来应用包括各种最终状态以及与其他独立的方法的潜在组合。

Given the lack of evidence for new particle discoveries at the Large Hadron Collider (LHC), it is critical to broaden the search program. A variety of model-independent searches have been proposed, adding sensitivity to unexpected signals. There are generally two types of such searches: those that rely heavily on simulations and those that are entirely based on (unlabeled) data. This paper introduces a hybrid method that makes the best of both approaches. For potential signals that are resonant in one known feature, this new method first learns a parameterized reweighting function to morph a given simulation to match the data in sidebands. This function is then interpolated into the signal region and then the reweighted background-only simulation can be used for supervised learning as well as for background estimation. The background estimation from the reweighted simulation allows for non-trivial correlations between features used for classification and the resonant feature. A dijet search with jet substructure is used to illustrate the new method. Future applications of Simulation Assisted Likelihood-free Anomaly Detection (SALAD) include a variety of final states and potential combinations with other model-independent approaches.

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