Modelling complex real-world situations such as infectious diseases, geological phenomena, and biological processes can present a dilemma: the computer model (referred to as a simulator) needs to be complex enough to capture the dynamics of the system, but each increase in complexity increases the evaluation time of such a simulation, making it difficult to obtain an informative description of parameter choices that would be consistent with observed reality. While methods for identifying acceptable matches to real-world observations exist, for example optimisation or Markov chain Monte Carlo methods, they may result in non-robust inferences or may be infeasible for computationally intensive simulators. The techniques of emulation and history matching can make such determinations feasible, efficiently identifying regions of parameter space that produce acceptable matches to data while also providing valuable information about the simulator's structure, but the mathematical considerations required to perform emulation can present a barrier for makers and users of such simulators compared to other methods. The hmer package provides an accessible framework for using history matching and emulation on simulator data, leveraging the computational efficiency of the approach while enabling users to easily match to, visualise, and robustly predict from their complex simulators.
翻译:在模拟复杂的真实情况(如传染病、地质现象和生物过程)时,可能面临一个两难问题:计算机模型(称为仿真器)需要足够复杂以捕捉系统的动态,但每增加一个复杂度就会增加仿真的计算时间,这使得难以获得与真实观测一致的参数选择的信息。虽然存在着诸如优化或马尔可夫链蒙特卡罗方法之类的方法来确定对真实世界观测的可接受匹配,但它们可能会导致非稳健的推理或在计算密集型模拟器中无法实现。仿真器模型的仿真和历史匹配技术可以使此类决策变得可行,有效地识别能够产生与数据匹配的可接受匹配参数空间的区域,同时还提供有关仿真器结构的有价值信息。然而,为了进行仿真,所需的数学考虑可能会使仿真器制造商和用户与其他方法相比存在箱庭。hmer 软件包为使用仿真器数据进行历史匹配和仿真提供了一个可访问的框架,利用了该方法的计算效率,同时使用户能够轻松匹配、可视化和稳健地预测他们的复杂仿真器。