Learning Model Bias
Abstract
In this paper the problem of {\em learning} appropriate domain-specific bias is addressed. It is shown that this can be achieved by learning many related tasks from the same domain, and a theorem is given bounding the number tasks that must be learnt. A corollary of the theorem is that if the tasks are known to possess a common {\em internal representation} or {\em preprocessing} then the number of examples required per task for good generalisation when learning tasks simultaneously scales like , where is a bound on the minimum number of examples required to learn a single task, and is a bound on the number of examples required to learn each task independently. An experiment providing strong qualitative support for the theoretical results is reported.
Cite
@article{arxiv.1911.06164,
title = {Learning Model Bias},
author = {Jonathan Baxter},
journal= {arXiv preprint arXiv:1911.06164},
year = {2019}
}