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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >TOWARDS CLOSED LOOP MODELING: EVALUATNG THE PROSPECTS FOR CREATING RECURRENTLY REGROUNDED AGGREGATE SIMULATION MODELS USING PARTICLE FILTERING
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TOWARDS CLOSED LOOP MODELING: EVALUATNG THE PROSPECTS FOR CREATING RECURRENTLY REGROUNDED AGGREGATE SIMULATION MODELS USING PARTICLE FILTERING

机译:迈向闭环建模:评估使用粒子滤波创建递归重新聚集的总体模拟模型的前景

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摘要

Public health agencies traditionally rely heavily on epidemiological reporting for notifiable disease control, but increasingly apply simulation models for forecasting and to understand intervention tradeoffs. Unfortunately, such models traditionally lack capacity to easily incorporate information from epidemiological data feeds. Here, we introduce particle filtering and demonstrate how this approach can be used to readily incorporate recurrently available new data so as to robustly tolerate - and correct for - both model limitations and noisy data, and to aid in parameter estimation, while imposing far less onerous assumptions regarding the mathematical framework and epidemiological and measurement processes than other proposed solutions. By comparing against synthetic ground truth produced by an agent-based model, we demonstrate the benefits conferred by particle filtering parameters and state variables even in the context of an aggregate, incomplete and systematically biased compartmental model, and note important avenues for future work to make such approaches more widely accessible.
机译:传统上,公共卫生机构在很大程度上依靠流行病学报告来控制可报告的疾病,但越来越多地将模拟模型用于预测和了解干预权衡。不幸的是,这种模型传统上缺乏轻松整合流行病学数据源信息的能力。在这里,我们介绍了粒子滤波,并演示了如何使用此方法轻松地合并循环可用的新数据,以鲁棒地容忍(并校正)模型限制和嘈杂的数据,并有助于进行参数估计,同时又不会造成太多麻烦有关数学框架,流行病学和测量过程的假设,而不是其他建议的解决方案。通过与基于代理的模型产生的综合地面实况进行比较,我们证明了即使在聚合,不完整且系统有偏差的隔室模型的情况下,粒子过滤参数和状态变量所带来的好处,并指出了未来工作的重要途径这种方法更容易获得。

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