Artículo de revista
Fixed-rate universal lossy source coding and model identification: Connection with zero-rate density estimation and the skeleton estimator
Fecha
2018Registro en:
Entropy, Volumen 20, Issue 9, 2018.
10994300
10.3390/e20090640
Autor
Silva, Jorge
Derpich, Milan
Institución
Resumen
This work demonstrates a formal connection between density estimation with a data-rate
constraint and the joint objective of fixed-rate universal lossy source coding and model identification
introduced by Raginsky in 2008 (IEEE TIT, 2008, 54, 3059–3077). Using an equivalent learning formulation,
we derive a necessary and sufficient condition over the class of densities for the achievability of the
joint objective. The learning framework used here is the skeleton estimator, a rate-constrained learning
scheme that offers achievable results for the joint coding and modeling problem by optimally adapting
its learning parameters to the specific conditions of the problem. The results obtained with the skeleton
estimator significantly extend the context where universal lossy source coding and model identification
can be achieved, allowing for applications that move from the known case of parametric collection of
densities with some smoothness and learnability conditions to the rich family of non-parametric L1-totally
bounded densities. In addition, in the parametric case we are able to remove one of the assumptions that
constrain the applicability of the original result obtaining similar performances in terms of the distortion
redundancy and per-letter rate overhead.