Recently, there has been a growing interest for mixed-categorical meta-models based on Gaussian process (GP) surrogates. In this setting, several existing approaches use different strategies either by using continuous kernels (e.g., continuous relaxation and Gower distance based GP) or by using a direct estimation of the correlation matrix. In this paper, we present a kernel-based approach that extends continuous exponential kernels to handle mixed-categorical variables. The proposed kernel leads to a new GP surrogate that generalizes both the continuous relaxation and the Gower distance based GP models. We demonstrate, on both analytical and engineering problems, that our proposed GP model gives a higher likelihood and a smaller residual error than the other kernel-based state-of-the-art models. Our method is available in the open-source software SMT.
翻译:最近,人们对基于高山进程(GP)代孕的混合分类元模型的兴趣日益浓厚,在这一背景下,一些现有办法采用不同的战略,要么使用连续内核(如连续放松和高尔距离GP),要么直接估计相关矩阵。在本文件中,我们提出了一个以内核为基础的办法,将连续的指数内核扩展至处理混合类变量。提议的内核导致一个新的GP代孕,将持续放松和高尔距离的GP模型概括化。我们在分析和工程问题上都表明,我们提议的GP模型比其他以内核为基础的状态模型具有更大的可能性和较小的残余错误。我们的方法可以在开放源软件SMT中找到。