Tensor Networks, a numerical tool originally designed for simulating quantum many-body systems, have recently been applied to solve Machine Learning problems. Exploiting a tree tensor network, we apply a quantum-inspired machine learning technique to a very important and challenging big data problem in high-energy physics: the analysis and classification of data produced by the Large Hadron Collider at CERN. In particular, we present how to effectively classify so-called b-jets, jets originating from b-quarks from proton–proton collisions in the LHCb experiment, and how to interpret the classification results. We exploit the Tensor Network approach to select important features and adapt the network geometry based on information acquired in ...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Tensor network states are ubiquitous in the investigation of quantum many-body (QMB) physics. Their ...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...
Abstract Tensor Networks, a numerical tool originally designed for simulating quantum many-body syst...
At LHCb, b-jets are tagged using several methods, some of them with high efficiency but low purity o...
At LHCb, b-jets are tagged using several methods, some of them with high efficiency but low purity o...
Machine Learning algorithms have played an important role in hadronic jet classification problems. T...
Machine learning enjoys widespread success in High Energy Physics (HEP) analyses at LHC. However the...
Machine learning is a promising application of quantum computing, but challenges remain for implemen...
Tensor Networks are non-trivial representations of high-dimensional tensors, originally designed to ...
Machine Learning algorithms have played an important role in hadronic jet classification problems. T...
Once developed for quantum theory, tensor networks have been established as a successful machine lea...
One of the major objectives of the experimental programs at the Large Hadron Collider (LHC) is the d...
Tensor Networks (TN) are approximations of high-dimensional tensors designed to represent locally en...
The precise determination of the b-quark pair-production asymmetry is important not only as a test o...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Tensor network states are ubiquitous in the investigation of quantum many-body (QMB) physics. Their ...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...
Abstract Tensor Networks, a numerical tool originally designed for simulating quantum many-body syst...
At LHCb, b-jets are tagged using several methods, some of them with high efficiency but low purity o...
At LHCb, b-jets are tagged using several methods, some of them with high efficiency but low purity o...
Machine Learning algorithms have played an important role in hadronic jet classification problems. T...
Machine learning enjoys widespread success in High Energy Physics (HEP) analyses at LHC. However the...
Machine learning is a promising application of quantum computing, but challenges remain for implemen...
Tensor Networks are non-trivial representations of high-dimensional tensors, originally designed to ...
Machine Learning algorithms have played an important role in hadronic jet classification problems. T...
Once developed for quantum theory, tensor networks have been established as a successful machine lea...
One of the major objectives of the experimental programs at the Large Hadron Collider (LHC) is the d...
Tensor Networks (TN) are approximations of high-dimensional tensors designed to represent locally en...
The precise determination of the b-quark pair-production asymmetry is important not only as a test o...
En col·laboració amb la Universitat Autònoma de Barcelona (UAB) i la Universitat de Barcelona (UB)Ov...
Tensor network states are ubiquitous in the investigation of quantum many-body (QMB) physics. Their ...
Unprecedented increase of complexity and scale of data is expected in computation necessary for the ...