English

Specialization in Hierarchical Learning Systems

Machine Learning 2020-11-04 v1 Machine Learning

Abstract

Joining multiple decision-makers together is a powerful way to obtain more sophisticated decision-making systems, but requires to address the questions of division of labor and specialization. We investigate in how far information constraints in hierarchies of experts not only provide a principled method for regularization but also to enforce specialization. In particular, we devise an information-theoretically motivated on-line learning rule that allows partitioning of the problem space into multiple sub-problems that can be solved by the individual experts. We demonstrate two different ways to apply our method: (i) partitioning problems based on individual data samples and (ii) based on sets of data samples representing tasks. Approach (i) equips the system with the ability to solve complex decision-making problems by finding an optimal combination of local expert decision-makers. Approach (ii) leads to decision-makers specialized in solving families of tasks, which equips the system with the ability to solve meta-learning problems. We show the broad applicability of our approach on a range of problems including classification, regression, density estimation, and reinforcement learning problems, both in the standard machine learning setup and in a meta-learning setting.

Keywords

Cite

@article{arxiv.2011.01845,
  title  = {Specialization in Hierarchical Learning Systems},
  author = {Heinke Hihn and Daniel A. Braun},
  journal= {arXiv preprint arXiv:2011.01845},
  year   = {2020}
}
R2 v1 2026-06-23T19:53:30.157Z