Pang Wei, Coghill George M
School of Natural and Computing Sciences, University of Aberdeen, Aberdeen AB24 3UE, UK.
Appl Soft Comput. 2015 Feb;27:148-157. doi: 10.1016/j.asoc.2014.11.008.
In this paper, we explore the application of Opt-AiNet, an immune network approach for search and optimisation problems, to learning qualitative models in the form of qualitative differential equations. The Opt-AiNet algorithm is adapted to qualitative model learning problems, resulting in the proposed system QML-AiNet. The potential of QML-AiNet to address the scalability and multimodal search space issues of qualitative model learning has been investigated. More importantly, to further improve the efficiency of QML-AiNet, we also modify the mutation operator according to the features of discrete qualitative model space. Experimental results show that the performance of QML-AiNet is comparable to QML-CLONALG, a QML system using the clonal selection algorithm (CLONALG). More importantly, QML-AiNet with the modified mutation operator can significantly improve the scalability of QML and is much more efficient than QML-CLONALG.
在本文中,我们探索将Opt - AiNet(一种用于搜索和优化问题的免疫网络方法)应用于以定性微分方程形式学习定性模型。Opt - AiNet算法被适配于定性模型学习问题,从而产生了所提出的系统QML - AiNet。我们研究了QML - AiNet解决定性模型学习中的可扩展性和多模态搜索空间问题的潜力。更重要的是,为了进一步提高QML - AiNet的效率,我们还根据离散定性模型空间的特征修改了变异算子。实验结果表明,QML - AiNet的性能与使用克隆选择算法(CLONALG)的QML系统QML - CLONALG相当。更重要的是,具有修改后变异算子的QML - AiNet可以显著提高QML的可扩展性,并且比QML - CLONALG效率更高。