Random Logic Programs: Linear Model
Artificial Intelligence
2015-10-07 v1
Abstract
This paper proposes a model, the linear model, for randomly generating logic programs with low density of rules and investigates statistical properties of such random logic programs. It is mathematically shown that the average number of answer sets for a random program converges to a constant when the number of atoms approaches infinity. Several experimental results are also reported, which justify the suitability of the linear model. It is also experimentally shown that, under this model, the size distribution of answer sets for random programs tends to a normal distribution when the number of atoms is sufficiently large.
Cite
@article{arxiv.1406.6102,
title = {Random Logic Programs: Linear Model},
author = {Kewen Wang and Lian Wen and Kedian Mu},
journal= {arXiv preprint arXiv:1406.6102},
year = {2015}
}
Comments
33 pages. To appear in: Theory and Practice of Logic Programming