Agent Based Modelling (ABM) is a computational framework for simulating the behaviours and interactions of autonomous agents. As Agent Based Models are usually representative of complex systems, obtaining a likelihood function of the model parameters is nearly always intractable. There is a necessity to conduct inference in a likelihood free context in order to understand the model output. Approximate Bayesian Computation is a suitable approach for this inference. It can be applied to an Agent Based Model to both validate the simulation and infer a set of parameters to describe the model. Recent research in ABC has yielded increasingly efficient algorithms for calculating the approximate likelihood. These are investigated and compared using a pedestrian model in the Hamilton CBD.
翻译:代理人基础建模(ABM)是模拟自主代理人行为和互动的计算框架。代理基础建模(ABM)通常代表复杂的系统,因此获得模型参数的可能功能几乎总是难以解决的。为了理解模型输出,有必要在可能的自由背景下进行推论。近似巴伊西亚计算是这一推论的合适方法。它可以适用于代理人基础建模,既验证模拟,又推断出一组参数来描述模型。ABC的最近研究产生了计算概率的日益高效的算法。这些算法在汉密尔顿《生物多样性公约》中使用行人模型进行调查和比较。