Calibrating agent-based models (ABMs) to data is among the most fundamental requirements to ensure the model fulfils its desired purpose. In recent years, simulation-based inference methods have emerged as powerful tools for performing this task when the model likelihood function is intractable, as is often the case for ABMs. In some real-world use cases of ABMs, both the observed data and the ABM output consist of the agents' states and their interactions over time. In such cases, there is a tension between the desire to make full use of the rich information content of such granular data on the one hand, and the need to reduce the dimensionality of the data to prevent difficulties associated with high-dimensional learning tasks on the other. A possible resolution is to construct lower-dimensional time-series through the use of summary statistics describing the macrostate of the system at each time point. However, a poor choice of summary statistics can result in an unacceptable loss of information from the original dataset, dramatically reducing the quality of the resulting calibration. In this work, we instead propose to learn parameter posteriors associated with granular microdata directly using temporal graph neural networks. We will demonstrate that such an approach offers highly compelling inductive biases for Bayesian inference using the raw ABM microstates as output.
翻译:在一些现实世界使用反弹道导弹的案例中,观察到的数据和反弹道导弹产出都由物剂的状态及其随时间推移的相互作用组成。在这种情况下,希望充分利用这种颗粒数据丰富的信息内容的愿望与需要减少数据量以防止与高维学习任务有关的困难的必要性之间的矛盾。一个可能的解决办法是通过使用描述系统每个时间点的宏观状态的简要统计数据来构建低维时间序列。然而,如果选择摘要统计数据可能会造成无法接受的原始数据集信息损失,从而大大降低由此产生的校准的质量。在这项工作中,我们提议学习与直接使用时针式神经神经神经网络的颗粒微数据相关的参数后方位数据。我们将会通过采用高压式神经神经网络来展示这种具有高度说服力的反导力。