论文标题
帕累托前建模的基于投影的主动高斯过程回归
Projection based Active Gaussian Process Regression for Pareto Front Modeling
论文作者
论文摘要
Pareto Front(PF)建模对于在所有领域的决策问题(例如经济学,医学或工程)中至关重要。在操作研究文献中,该任务是基于多目标优化算法解决的。但是,如果没有PF的学习模型,这些方法将无法检查新提供的点是否位于PF上。在本文中,我们从数据挖掘的角度重新考虑任务。提出了一种基于投影的活性高斯过程回归(P-AGPR)方法,用于有效的PF建模。首先,P-AGPR选择了一系列的投影空间,其尺寸从低到高。接下来,在每个投影空间中,训练了高斯过程回归(GPR)模型,以表示PF在该空间中应满足的约束。此外,为了提高建模功效和稳定性,通过利用GPR模型中获得的不确定性信息来开发一个主动的学习框架。与所有现有方法不同,我们提出的P-AGPR方法不仅可以提供生成的PF模型,而且可以快速检查提供的点是否位于PF上。数值结果表明,与最新的被动学习方法相比,提出的P-AGPR方法可以实现更高的建模准确性和稳定性。
Pareto Front (PF) modeling is essential in decision making problems across all domains such as economics, medicine or engineering. In Operation Research literature, this task has been addressed based on multi-objective optimization algorithms. However, without learning models for PF, these methods cannot examine whether a new provided point locates on PF or not. In this paper, we reconsider the task from Data Mining perspective. A novel projection based active Gaussian process regression (P- aGPR) method is proposed for efficient PF modeling. First, P- aGPR chooses a series of projection spaces with dimensionalities ranking from low to high. Next, in each projection space, a Gaussian process regression (GPR) model is trained to represent the constraint that PF should satisfy in that space. Moreover, in order to improve modeling efficacy and stability, an active learning framework has been developed by exploiting the uncertainty information obtained in the GPR models. Different from all existing methods, our proposed P-aGPR method can not only provide a generative PF model, but also fast examine whether a provided point locates on PF or not. The numerical results demonstrate that compared to state-of-the-art passive learning methods the proposed P-aGPR method can achieve higher modeling accuracy and stability.