We introduce methodology to construct an emulator for environmental and ecological spatio-temporal processes that uses the higher order singular value decomposition (HOSVD) as an extension of singular value decomposition (SVD) approaches to emulation. Some important advantages of the method are that it allows for the use of a combination of supervised learning methods (e.g., random forests and Gaussian process regression) and also allows for the prediction of process values at spatial locations and time points that were not used in the training sample. The method is demonstrated with two applications: the first is a periodic solution to a shallow ice approximation partial differential equation from glaciology, and second is an agent-based model of collective animal movement. In both cases, we demonstrate the value of combining different machine learning models for accurate emulation. In addition, in the agent-based model case we demonstrate the ability of the tensor emulator to successfully capture individual behavior in space and time. We demonstrate via a real data example the ability to perform Bayesian inference in order to learn parameters governing collective animal behavior.
翻译:我们引入了一种方法,为环境和生态时空蒸发过程建造一个模拟器,该模拟器使用较高顺序单值分解法(HOSVD)作为超值分解法(SVD)的延伸,该方法的一些重要优点是,该方法允许综合使用受监督的学习方法(如随机森林和高斯进程回归),还允许预测空间地点和时间点的工艺值,而培训样本没有使用这些工艺。该方法有两个用途:第一个是定期解决冰川学浅冰近似部分差异方程式的解决方案,第二个是集体动物运动的代理模型。在这两种情况下,我们展示了将不同的机器学习模型结合起来进行准确模拟的价值。此外,在以代理人为基础的模型中,我们展示了高温模拟器在空间和时间成功地捕捉个人行为的能力。我们通过一个真实的数据示例展示了进行贝氏推算的能力,以便学习关于集体动物行为的参数。