Confidence-based reasoning in stochastic constraint programming
作者:
摘要
In this work we introduce a novel approach, based on sampling, for finding assignments that are likely to be solutions to stochastic constraint satisfaction problems and constraint optimisation problems. Our approach reduces the size of the original problem being analysed; by solving this reduced problem, with a given confidence probability, we obtain assignments that satisfy the chance constraints in the original model within prescribed error tolerance thresholds. To achieve this, we blend concepts from stochastic constraint programming and statistics. We discuss both exact and approximate variants of our method. The framework we introduce can be immediately employed in concert with existing approaches for solving stochastic constraint programs. A thorough computational study on a number of stochastic combinatorial optimisation problems demonstrates the effectiveness of our approach.
论文关键词:Confidence-based reasoning,Stochastic constraint programming,Sampled SCSP,(α,ϑ)-solution,(α,ϑ)-solution set,Confidence interval analysis,Global chance constraint
论文评审过程:Received 7 November 2014, Revised 5 July 2015, Accepted 8 July 2015, Available online 15 July 2015, Version of Record 28 July 2015.
论文官网地址:https://doi.org/10.1016/j.artint.2015.07.004