Learning Equivariant Maps with Variational Quantum Circuits
- URL: http://arxiv.org/abs/2412.11889v2
- Date: Tue, 11 Feb 2025 18:57:44 GMT
- Title: Learning Equivariant Maps with Variational Quantum Circuits
- Authors: Zachary P. Bradshaw, Ethan N. Evans, Matthew Cook, Margarite L. LaBorde,
- Abstract summary: Geometric quantum machine learning uses the symmetries inherent in data to design tailored machine learning tasks.
This work explores the related problem of learning an equivariant map given two unitary representations of a finite group.
- Score: 0.464982780843177
- License:
- Abstract: Geometric quantum machine learning uses the symmetries inherent in data to design tailored machine learning tasks with reduced search space dimension. The field has been well-studied recently in an effort to avoid barren plateau issues while improving the accuracy of quantum machine learning models. This work explores the related problem of learning an equivariant map given two unitary representations of a finite group, which in turn allows the symmetric embedding of the data to be learned rather than simply required. Moreover, this procedure allows the learning of covariant quantum channels, which are an essential tool in quantum information theory. We demonstrate the feasibility of this task and give examples to illustrate the procedure.
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