Environmental Adaptation and Differential Replication in Machine Learning
Otros/as autores/as
Fecha de publicación
2020ISSN
1099-4300
Resumen
When deployed in the wild, machine learning models are usually confronted with an environment that imposes severe constraints. As this environment evolves, so do these constraints. As a result, the feasible set of solutions for the considered need is prone to change in time. We refer to this problem as that of environmental adaptation. In this paper, we formalize environmental adaptation and discuss how it differs from other problems in the literature. We propose solutions based on differential replication, a technique where the knowledge acquired by the deployed models is reused in specific ways to train more suitable future generations. We discuss different mechanisms to implement differential replications in practice, depending on the considered level of knowledge. Finally, we present seven examples where the problem of environmental adaptation can be solved through differential replication in real-life applications.
Tipo de documento
Artículo
Versión del documento
Versión publicada
Lengua
Inglés
Palabras clave
Natural selection
Páginas
14 p.
Publicado por
Multidisciplinary Digital Publishing Institute (MDPI)
Publicado en
Entropy
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