Learning an efficient constructive sampler for graphs

作者:

摘要

Discriminative systems that can deal with graphs in input are known, however, generative or constructive approaches that can sample graphs from empirical distributions are less developed. Here we propose a Metropolis–Hastings approach that uses a novel type of graph grammar to efficiently learn proposal distributions in a data driven fashion. We report experimental results in a de-novo molecular synthesis problem where we show that the distribution of the molecules generated by the sampling procedure is accurate enough to improve a predictor's performance in a classification task.

论文关键词:Graph construction,Graph sampling,Graph kernels,Metropolis Hastings sampling

论文评审过程:Revised 7 January 2016, Accepted 9 January 2016, Available online 14 January 2016, Version of Record 9 February 2017.

论文官网地址:https://doi.org/10.1016/j.artint.2016.01.006