SOTAVerified

VC-Dimension Based Generalization Bounds for Relational Learning

2018-04-17Unverified0· sign in to hype

Ondrej Kuzelka, Yuyi Wang, Steven Schockaert

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

In many applications of relational learning, the available data can be seen as a sample from a larger relational structure (e.g. we may be given a small fragment from some social network). In this paper we are particularly concerned with scenarios in which we can assume that (i) the domain elements appearing in the given sample have been uniformly sampled without replacement from the (unknown) full domain and (ii) the sample is complete for these domain elements (i.e. it is the full substructure induced by these elements). Within this setting, we study bounds on the error of sufficient statistics of relational models that are estimated on the available data. As our main result, we prove a bound based on a variant of the Vapnik-Chervonenkis dimension which is suitable for relational data.

Tasks

Reproductions