Stochastic Optimization for Collision Selection in High Energy Physics
S. Whiteson, D. Whiteson

TL;DR
This paper introduces a stochastic optimization method to improve collision selection in high energy physics, significantly reducing the statistical uncertainty in top quark mass measurements compared to traditional heuristics and supervised learning.
Contribution
It presents a novel stochastic optimization approach that directly minimizes statistical uncertainty in top quark mass measurements, outperforming existing selection methods.
Findings
Stochastically optimized selectors achieve smaller statistical uncertainty.
The new selectors are currently used in real collision data analysis.
Empirical results demonstrate improved measurement precision.
Abstract
The underlying structure of matter can be deeply probed via precision measurements of the mass of the \emph{top quark}, the most massive observed fundamental particle. Top quarks can be produced and studied only in collisions at high energy particle accelerators. Most collisions, however, do not produce top quarks; making precise measurements requires culling these collisions into a sample that is rich in collisions producing top quarks (\emph{signal}) and spare in collisions producing other particles (\emph{background}). Collision selection is typically performed with heuristics or supervised learning methods. However, such approaches are suboptimal because they assume that the selector with the highest classification accuracy will yield a mass measurement with the smallest statistical uncertainty. In practice, however, the mass measurement is more sensitive to some backgrounds than…
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Taxonomy
TopicsMachine Learning and Algorithms · Algorithms and Data Compression · Simulation Techniques and Applications
