Cheng Chen, Wen Linjie, Li Jinglai
School of Mathematical Sciences, Shanghai Jiao Tong University, Shanghai 200240, People's Republic of China.
School of Earth and Space Sciences, Peking University, 5 Yiheyuan Rd, Beijing 100871, People's Republic of China.
R Soc Open Sci. 2023 Aug 9;10(8):230275. doi: 10.1098/rsos.230275. eCollection 2023 Aug.
In this work, we study systems consisting of a group of moving particles. In such systems, often some important parameters are unknown and have to be estimated from observed data. Such parameter estimation problems can often be solved via a Bayesian inference framework. However, in many practical problems, only data at the aggregate level is available and as a result the likelihood function is not available, which poses a challenge for Bayesian methods. In particular, we consider the situation where the distributions of the particles are observed. We propose a Wasserstein distance (WD)-based sequential Monte Carlo sampler to solve the problem: the WD is used to measure the similarity between the observed and the simulated particle distributions and the sequential Monte Carlo samplers is used to deal with the sequentially available observations. Two real-world examples are provided to demonstrate the performance of the proposed method.
在这项工作中,我们研究由一组移动粒子组成的系统。在这样的系统中,一些重要参数常常是未知的,必须从观测数据中进行估计。此类参数估计问题通常可以通过贝叶斯推理框架来解决。然而,在许多实际问题中,仅能获取总体层面的数据,因此似然函数不可用,这给贝叶斯方法带来了挑战。特别地,我们考虑粒子分布可观测的情况。我们提出一种基于瓦瑟斯坦距离(WD)的序贯蒙特卡罗采样器来解决该问题:WD用于衡量观测到的粒子分布与模拟的粒子分布之间的相似度,序贯蒙特卡罗采样器则用于处理依次可得的观测数据。提供了两个实际例子来展示所提方法的性能。