A key component of a quantum machine learning model operating on classical inputs is the design of an embedding circuit mapping inputs to a quantum state. This paper studies a transfer learning setting in which classical-to-quantum embedding is carried out by an arbitrary parametric quantum circuit that is pre-trained based on data from a source task. At run time, a binary quantum classifier of the embedding is optimized based on data from the target task of interest. The average excess risk, i.e., the optimality gap, of the resulting classifier depends on how (dis)similar the source and target tasks are. We introduce a new measure of (dis)similarity between the binary quantum classification tasks via the trace distances. An upper bound on ...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
In the past few decades, researchers have extensively investigated the applications of quantum compu...
48+14 pages, 4 figuresLearning tasks play an increasingly prominent role in quantum information and ...
Machine learning algorithms based on parametrized quantum circuits are prime candidates for near-ter...
This dissertation explores results at the intersection of two important branches of theoretical comp...
Quantum classifiers are trainable quantum circuits used as machine learning models. The first part o...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
In the current noisy intermediate-scale quantum (NISQ) era, quantum machine learning is emerging as ...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We study classical and quantum learning algorithms with access to data produced by a quantum process...
The task of learning a probability distribution from samples is ubiquitous across the natural scienc...
Neural-network quantum states have shown great potential for the study of many-body quantum systems....
We study classical and quantum learning algorithms with access to data produced by a quantum process...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
In the past few decades, researchers have extensively investigated the applications of quantum compu...
48+14 pages, 4 figuresLearning tasks play an increasingly prominent role in quantum information and ...
Machine learning algorithms based on parametrized quantum circuits are prime candidates for near-ter...
This dissertation explores results at the intersection of two important branches of theoretical comp...
Quantum classifiers are trainable quantum circuits used as machine learning models. The first part o...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
In the current noisy intermediate-scale quantum (NISQ) era, quantum machine learning is emerging as ...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We study classical and quantum learning algorithms with access to data produced by a quantum process...
The task of learning a probability distribution from samples is ubiquitous across the natural scienc...
Neural-network quantum states have shown great potential for the study of many-body quantum systems....
We study classical and quantum learning algorithms with access to data produced by a quantum process...
Quantum computing represents a promising paradigm for solving complex problems, such as large-number...
We study quantum learning algorithms for quantum measurements. The optimal learning algorithm is der...
In the past few decades, researchers have extensively investigated the applications of quantum compu...