We study the case where quantum computing could improve jet clustering by considering two new quantum algorithms that might speed up classical jet clustering algorithms. The first one is a quantum subroutine to compute a Minkowski-based distance between two data points, while the second one consists of a quantum circuit to track the rough maximum into a list of unsorted data. When one or both algorithms are implemented in classical versions of well-known clustering algorithms (K-means, Affinity Propagation and $k_T$-jet) we obtain efficiencies comparable to those of their classical counterparts. Furthermore, in the first two algorithms, an exponential speed up in dimensionality and data length can be achieved when applying the distance or t...
Nearest-neighbour clustering is a simple yet powerful machine learning algorithm that finds natural ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Many quantum algorithms for machine learning require access to classical data in superposition. Howe...
Clustering is one of the most frequent problems in many domains, in particular, in particle physics ...
Identifying jets formed in high-energy particle collisions requires solving optimization problems ov...
Clustering is one of the most crucial problems in unsupervised learning, and the well-known $k$-mean...
In this thesis we face the problem of clustering with the aim of designing a quantum version of the ...
Quantum Clustering (QC) provides an alternative approach to clustering algorithms, several of which ...
In this work, we aim to solve a practical use-case of unsupervised clustering which has applications...
International audienceWe show how the quantum paradigm can be used to speed up unsupervised learning...
Quantum algorithms are being extensively researched nowadays seeing thepotential of providing expone...
Distance measures provide the foundation for many popular algorithms in Machine Learning and Pattern...
The goal of this thesis is on the borderline between quantum computing andmachine learning and deals...
Cette thèse se situe à la frontière entre l’informatique quantique et l’apprentissage artificiel et ...
Quantum computing is an emerging technology that uses the principles of quantum mechanics to solve p...
Nearest-neighbour clustering is a simple yet powerful machine learning algorithm that finds natural ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Many quantum algorithms for machine learning require access to classical data in superposition. Howe...
Clustering is one of the most frequent problems in many domains, in particular, in particle physics ...
Identifying jets formed in high-energy particle collisions requires solving optimization problems ov...
Clustering is one of the most crucial problems in unsupervised learning, and the well-known $k$-mean...
In this thesis we face the problem of clustering with the aim of designing a quantum version of the ...
Quantum Clustering (QC) provides an alternative approach to clustering algorithms, several of which ...
In this work, we aim to solve a practical use-case of unsupervised clustering which has applications...
International audienceWe show how the quantum paradigm can be used to speed up unsupervised learning...
Quantum algorithms are being extensively researched nowadays seeing thepotential of providing expone...
Distance measures provide the foundation for many popular algorithms in Machine Learning and Pattern...
The goal of this thesis is on the borderline between quantum computing andmachine learning and deals...
Cette thèse se situe à la frontière entre l’informatique quantique et l’apprentissage artificiel et ...
Quantum computing is an emerging technology that uses the principles of quantum mechanics to solve p...
Nearest-neighbour clustering is a simple yet powerful machine learning algorithm that finds natural ...
Solving electronic structure problems represents a promising field of application for quantum comput...
Many quantum algorithms for machine learning require access to classical data in superposition. Howe...