论文标题
新物理学的自我监督的异常检测
Self-supervised Anomaly Detection for New Physics
论文作者
论文摘要
我们通过研究喷气机,高能碰撞中产生的准直喷的颗粒,研究了一种模型 - 敏捷异常检测的方法。我们训练一个变压器神经网络,将模拟的QCD“事件空间” Dijets编码为低维的“潜在空间”表示。我们使用自我监督的对比损失来优化网络,这鼓励保留已知的二甲虫物理对称性。然后,我们训练二进制分类器,以区分事件空间和潜在空间表示中的QCD dijet背景的BSM共振信号。我们发现该事件上的分类器表演和潜在空间是可比的。我们终于使用潜在的空间dijets上使用弱监督的凸起狩猎进行异常检测搜索,再次找到了与物理空间二行在搜索型搜索中的可比性能。这为在通用粒子碰撞事件中使用低维潜图作为一个计算效率空间的空间打开了大门。
We investigate a method of model-agnostic anomaly detection through studying jets, collimated sprays of particles produced in high-energy collisions. We train a transformer neural network to encode simulated QCD "event space" dijets into a low-dimensional "latent space" representation. We optimize the network using the self-supervised contrastive loss, which encourages the preservation of known physical symmetries of the dijets. We then train a binary classifier to discriminate a BSM resonant dijet signal from a QCD dijet background both in the event space and the latent space representations. We find the classifier performances on the event and latent spaces to be comparable. We finally perform an anomaly detection search using a weakly supervised bump hunt on the latent space dijets, finding again a comparable performance to a search run on the physical space dijets. This opens the door to using low-dimensional latent representations as a computationally efficient space for resonant anomaly detection in generic particle collision events.