2024
DOI: 10.1007/jhep05(2024)292
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From optimal observables to machine learning: an effective-field-theory analysis of e+e− → W+W− at future lepton colliders

Shengdu Chai,
Jiayin Gu,
Lingfeng Li

Abstract: We apply machine-learning techniques to the effective-field-theory analysis of the e+e− → W+W− processes at future lepton colliders, and demonstrate their advantages in comparison with conventional methods, such as optimal observables. In particular, we show that machine-learning methods are more robust to detector effects and backgrounds, and could in principle produce unbiased results with sufficient Monte Carlo simulation samples that accurately describe experiments. This is crucial for the analyses at futu… Show more

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