Machine learning plays a crucial role in enhancing and accelerating the search for new fundamental physics. We review the state of machine learning methods and applications for new physics searches in the context of terrestrial high energy physics experiments, including the Large Hadron Collider, rare event searches, and neutrino experiments. While machine learning has a long history in these fields, the deep learning revolution (early 2010s) has yielded a qualitative shift in terms of the scope and ambition of research. These modern machine learning developments are the focus of the present review.
翻译:机器学习在加强和加速寻找新的基本物理学方面发挥着关键作用。我们结合地面高能物理实验,包括大型强子对撞机、稀有事件搜索和中微子实验,审视机器学习方法和新物理学搜索应用的现状。虽然机器学习在这些领域有悠久的历史,但深层学习革命(2010年代初期)在研究的范围和雄心方面产生了质的变化。这些现代机器学习的发展是本次审查的重点。