Fine-tuning machine-learned particle-flow reconstruction for new detector geometries in future colliders

arXiv:2503.00131v411 citationsh-index: 76Physical Review D
Originality Incremental advance
AI Analysis

This addresses the challenge of accelerating detector development cycles for high-energy physics experiments, though it is incremental as it applies existing transfer learning techniques to a new domain.

The paper tackles the problem of adapting particle-flow reconstruction algorithms to new detector geometries in future colliders by demonstrating cross-detector transfer learning, showing that fine-tuning with an order of magnitude less data achieves the same performance as training from scratch and matches traditional rule-based methods with 100,000 events instead of 1 million.

We demonstrate transfer learning capabilities in a machine-learned algorithm trained for particle-flow reconstruction in high energy particle colliders. This paper presents a cross-detector fine-tuning study, where we initially pretrain the model on a large full simulation dataset from one detector design, and subsequently fine-tune the model on a sample with a different collider and detector design. Specifically, we use the Compact Linear Collider detector (CLICdet) model for the initial training set and demonstrate successful knowledge transfer to the CLIC-like detector (CLD) proposed for the Future Circular Collider in electron-positron mode. We show that with an order of magnitude less samples from the second dataset, we can achieve the same performance as a costly training from scratch, across particle-level and event-level performance metrics, including jet and missing transverse momentum resolution. Furthermore, we find that the fine-tuned model achieves comparable performance to the traditional rule-based particle-flow approach on event-level metrics after training on 100,000 CLD events, whereas a model trained from scratch requires at least 1 million CLD events to achieve similar reconstruction performance. To our knowledge, this represents the first full-simulation cross-detector transfer learning study for particle-flow reconstruction. These findings offer valuable insights towards building large foundation models that can be fine-tuned across different detector designs and geometries, helping to accelerate the development cycle for new detectors and opening the door to rapid detector design and optimization using machine learning.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes