Beyond $$M_{t\bar{t}}$$ : learning to search for a broad $$t\bar{t}$$ resonance at the LHC
Sunghoon Jung (Center for Theoretical Physics, Department of Physics and Astronomy, Seoul National University, Seoul, 08826, South Korea); Dongsub Lee (Center for Theoretical Physics, Department of Physics and Astronomy, Seoul National University, Seoul, 08826, South Korea); Ke-Pan Xie (Center for Theoretical Physics, Department of Physics and Astronomy, Seoul National University, Seoul, 08826, South Korea)
A resonance peak in the invariant mass spectrum has been the main feature of a particle at collider experiments. However, broad resonances not exhibiting such a sharp peak are generically predicted in new physics models beyond the Standard Model. Without a peak, how do we discover a broad resonance at colliders? We use machine learning technique to explore answers beyond common knowledge. We learn that, by applying deep neural network to the case of a $$t\bar{t}$$ resonance, the invariant mass $$M_{t\bar{t}}$$ is still useful, but additional information from off-resonance region, angular correlations, $$p_T$$ , and top jet mass are also significantly important. As a result, the improved LHC sensitivities do not depend strongly on the width. The results may also imply that the additional information can be used to improve narrow-resonance searches too. Further, we also detail how we assess machine-learned information.