We introduce a new and highly efficient tagger for hadronically decaying top quarks, based on a deep neural network working with Lorentz vectors and the Minkowski metric. With its novel machine learning setup and architecture it allows us to identify boosted top quarks not only from calorimeter towers, but also including tracking information. We show how the performance of our tagger compares with QCD-inspired and image-recognition approaches and find that it significantly increases the performance for strongly boosted top quarks
The scope of this project concentrates mainly on tagging the hadronic top quark signal versus W an...
Analyses involving top quarks are characterised by the presence of several b-jets in the final state...
Multiple techniques for reconstructing highly Lorentz-boosted, hadronically-decaying top quarks are ...
The study of boosted top quarks is very important for probing a wide variety of new physics models. ...
Many searches for physics beyond the Standard Model at the Large Hadron Collider (LHC) rely on top t...
Abstract We apply computer vision with deep learning — in the form of a convolutional neural network...
In this report I will show the application of a deep learning algorithm on a Monte Carlo simulation ...
The identification of top quarks is motivated by their high mass and strong coupling to the Higgs me...
Abstract Machine learning based on convolutional neural networks can be used to study jet images fro...
We present techniques for the identification of hadronically-decaying W bosons and top quarks using ...
Deep neural networks (DNNs) have been applied to the fields of computer vision and natural language ...
The performance of identification algorithms (“taggers”) for hadronically decaying top quarks and W ...
Top quark particles play an important role in many beyond-the-standard-model scenarios. When produce...
In this note, machine learning (ML) based techniques are presented to identify and classify hadronic...
Machine learning algorithms have the capacity to discern intricate features directly from raw data. ...
The scope of this project concentrates mainly on tagging the hadronic top quark signal versus W an...
Analyses involving top quarks are characterised by the presence of several b-jets in the final state...
Multiple techniques for reconstructing highly Lorentz-boosted, hadronically-decaying top quarks are ...
The study of boosted top quarks is very important for probing a wide variety of new physics models. ...
Many searches for physics beyond the Standard Model at the Large Hadron Collider (LHC) rely on top t...
Abstract We apply computer vision with deep learning — in the form of a convolutional neural network...
In this report I will show the application of a deep learning algorithm on a Monte Carlo simulation ...
The identification of top quarks is motivated by their high mass and strong coupling to the Higgs me...
Abstract Machine learning based on convolutional neural networks can be used to study jet images fro...
We present techniques for the identification of hadronically-decaying W bosons and top quarks using ...
Deep neural networks (DNNs) have been applied to the fields of computer vision and natural language ...
The performance of identification algorithms (“taggers”) for hadronically decaying top quarks and W ...
Top quark particles play an important role in many beyond-the-standard-model scenarios. When produce...
In this note, machine learning (ML) based techniques are presented to identify and classify hadronic...
Machine learning algorithms have the capacity to discern intricate features directly from raw data. ...
The scope of this project concentrates mainly on tagging the hadronic top quark signal versus W an...
Analyses involving top quarks are characterised by the presence of several b-jets in the final state...
Multiple techniques for reconstructing highly Lorentz-boosted, hadronically-decaying top quarks are ...