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Learnable cut flow for high energy physics
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A
bstract
Neural networks have emerged as a powerful paradigm for tasks in high energy physics, yet their opaque training process renders them as a black box. In contrast, the traditional cut flow method offers simplicity and interpretability but requires extensive manual tuning to identify optimal cut boundaries. To merge the strengths of both approaches, we propose the
Learnable Cut Flow
(LCF), a neural network that transforms the traditional cut selection into a fully differentiable, data-driven process. LCF implements two cut strategies — parallel, where observable distributions are treated independently, and sequential, where prior cuts shape subsequent ones — to flexibly determine optimal boundaries. Building on this strategy, we introduce the
Learnable Importance
, a metric that quantifies feature importance and adjusts their contributions to the loss accordingly, offering model-driven insights unlike ad-hoc metrics. To ensure differentiability, a modified loss function replaces hard cuts with mask operations, preserving data shape throughout the training process. LCF is tested on six varied mock datasets and a realistic diboson vs. QCD dataset. Results demonstrate that LCF (1) accurately learns cut boundaries across typical feature distributions in both parallel and sequential strategies, (2) assigns higher importance to discriminative features with minimal overlap, (3) handles redundant or correlated features robustly, and (4) performs effectively in real-world scenarios. In the diboson dataset, LCF initially underperforms boosted decision trees and multilayer perceptrons when using all observables. LCF bridges the gap between traditional cut flow method and modern black-box neural networks, delivering actionable insights into the training process and feature importance. Source code and experimental data are available at
https://github.com/Star9daisy/learnable-cut-flow
.
Title: Learnable cut flow for high energy physics
Description:
A
bstract
Neural networks have emerged as a powerful paradigm for tasks in high energy physics, yet their opaque training process renders them as a black box.
In contrast, the traditional cut flow method offers simplicity and interpretability but requires extensive manual tuning to identify optimal cut boundaries.
To merge the strengths of both approaches, we propose the
Learnable Cut Flow
(LCF), a neural network that transforms the traditional cut selection into a fully differentiable, data-driven process.
LCF implements two cut strategies — parallel, where observable distributions are treated independently, and sequential, where prior cuts shape subsequent ones — to flexibly determine optimal boundaries.
Building on this strategy, we introduce the
Learnable Importance
, a metric that quantifies feature importance and adjusts their contributions to the loss accordingly, offering model-driven insights unlike ad-hoc metrics.
To ensure differentiability, a modified loss function replaces hard cuts with mask operations, preserving data shape throughout the training process.
LCF is tested on six varied mock datasets and a realistic diboson vs.
QCD dataset.
Results demonstrate that LCF (1) accurately learns cut boundaries across typical feature distributions in both parallel and sequential strategies, (2) assigns higher importance to discriminative features with minimal overlap, (3) handles redundant or correlated features robustly, and (4) performs effectively in real-world scenarios.
In the diboson dataset, LCF initially underperforms boosted decision trees and multilayer perceptrons when using all observables.
LCF bridges the gap between traditional cut flow method and modern black-box neural networks, delivering actionable insights into the training process and feature importance.
Source code and experimental data are available at
https://github.
com/Star9daisy/learnable-cut-flow
.
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