In this work, we introduce a novel method for solving the set inversion problem by formulating it as a binary classification problem. Aiming to develop a fast algorithm that can work effectively with high-dimensional and computationally expensive nonlinear models, we focus on active learning, a family of new and powerful techniques which can achieve the same level of accuracy with fewer data points compared to traditional learning methods. Specifically, we propose OASIS, an active learning framework using Support Vector Machine algorithms for solving the problem of set inversion. Our method works well in high dimensions and its computational cost is relatively robust to the increase of dimension. We illustrate the performance of OASIS by several simulation studies and show that our algorithm outperforms VISIA, the state-of-the-art method.
翻译:在这项工作中,我们引入了一种新颖的方法来解决被设定的倒置问题,将它表述为二元分类问题。为了发展一种快速算法,能够有效地使用高维和计算成本昂贵的非线性模型,我们把重点放在积极学习上,一个由新的和强大的技术组成的网络,能够达到与传统学习方法相比数据点较少的同样准确程度。具体地说,我们提议OASIS,这是一个使用支持矢量机算法解决被设定的倒置问题的积极学习框架。我们的方法在高维方面运作良好,其计算成本相对强劲,与维度的增加相对来说是相当的。我们通过一些模拟研究来说明ASIS的绩效,并表明我们的算法优于六SIA,即最先进的方法。