Home
Scholarly Works
General supervised learning as change propagation...
Preprint

General supervised learning as change propagation with delta lenses

Abstract

Delta lenses are an established mathematical framework for modelling and designing bidirectional model transformations. Following the recent observations by Fong et al, the paper extends the delta lens framework with a a new ingredient: learning over a parameterized space of model transformations seen as functors. We define a notion of an asymmetric learning delta lens with amendment (ala-lens), and show how ala-lenses can be organized into a symmetric monoidal (sm) category. We also show that sequential and parallel composition of well-behaved ala-lenses are also well-behaved so that well-behaved ala-lenses constitute a full sm-subcategory of ala-lenses.

Authors

Diskin Z

Publication date

November 28, 2019

DOI

10.48550/arxiv.1911.12904

Preprint server

arXiv
View published work (Non-McMaster Users)

Contact the Experts team