INVESTIGADORES
CABRELLI Carlos Alberto
artículos
Título:
Learning the model from the data
Autor/es:
CABRELLI, CARLOS; MOLTER, URSULA
Revista:
Revista de la Unión Matemática Argentina
Editorial:
Unión Matemática Argentina
Referencias:
Lugar: Bahia Blanca; Año: 2023 vol. 66 p. 141 - 152
Resumen:
The task of approximating data with a concise model comprising only a few parameters is a key concern in many applications, particularly in signal processing. These models, typically subspaces belonging to a specific class, are carefully chosen based on the data at hand. In this survey, we review the latest research on data approximation using models with few parameters, with a specific emphasis on scenarios where the data is situated in finite-dimensional vector spaces, functional spaces such as L2(Rd), and other general situations. We highlight the invariant properties of these subspace-based models that make them suitable for diverse applications, particularly in the field of image processing.