214cfbe603b7f9f9bc005d5f53f7a1d3-Paper.pdf
–Neural Information Processing Systems
In this paper, we investigate the question: Given a small number of datapoints, for example N = 30, how tight can PAC-Bayes and test set bounds be made? For such small datasets, test set bounds adversely affect generalisation performance by withholding data from the training procedure. In this setting, PAC-Bayes bounds are especially attractive, due to their ability to use all the data to simultaneouslylearn a posterior and bound its generalisation risk. We focus on the case of i.i.d.
Neural Information Processing Systems
Apr-25-2026, 01:54:35 GMT