1. Challenging calibration of complex models can be approached by using prior knowledge on the parameters. However, the natural choice of Bayesian inference can be computationally heavy when relying on Markov Chain Monte Carlo (MCMC) sampling. When the likelihood of the data is intractable, alternative Bayesian methods have been proposed. Approximate Bayesian Computation (ABC) only requires sampling from the data generative model, but may be problematic when the dimension of the data is high. 2. We studied alternative strategies to handle high dimensional data in ABC applied to the calibration of a spatially explicit foraging model for \textit{Bombus terrestris}. The first step consisted in building a set of summary statistics carrying enough biological meaning, i.e. as much as the original data, and then applying ABC on this set. Two ABC strategies, the use of regression adjustment leading to the production of ABC posterior samples, and the use of machine learning approaches to approximate ABC posterior quantiles, were compared with respect to coverage of model estimates and true parameter values. The comparison was made on simulated data as well as on data from two field studies. 3. Results from simulated data showed that some model parameters were easier to calibrate than others. Approaches based on random forests in general performed better on simulated data. They also performed well on field data, even though the posterior predictive distribution exhibited a higher variance. Nonlinear regression adjustment performed better than linear ones, and the classical ABC rejection algorithm performed badly. 4. ABC is an interesting and appealing approach for the calibration of complex models in biology, such as spatially explicit foraging models. However, while ABC methods are easy to implement, they require considerable tuning.
翻译:1. 利用以前对参数的了解,就可以对复杂模型进行挑战性校准。然而,在依赖Markov 链子蒙特卡洛(MCMC)取样时,贝叶斯人的自然推断在计算上可能很重。当数据的可能性很棘手时,就提出了替代贝叶斯人的方法。约近巴伊西亚计算(ABC)仅需要从数据基因化模型中取样,但在数据尺寸高时可能存在问题。2. 我们研究了处理ABC中高维度数据的其他战略,用于校准一个空间清晰的、用于计算\ textitit{Bombus terrestris} 的模型时,Bayesian 的自然推断值的自然选择可能很重。第一步是建立一套具有足够生物意义、即与原始数据一样多的简要统计,然后将ABC 校正模型样本样本样本样本样本中的回归调整方法可能存在问题,而对于ABC 近于ABC 的测算值的机器学习方法,与模型的覆盖面和真实参数值的精确度模型相比,A-BC的精确度的精确度调整是比较。在模拟模型模型中进行的数据比其他模型中进行得更清楚的数据,但是,在模拟的模型中,在模拟的模型中进行的数据中,在模拟模型中进行的数据中进行了比较是比较,在模拟数据中进行得得更精确的数据,在模拟的,在模拟的模型中,在模拟的模型数据中比为更精确度数据,在模拟的精确度上比为精确。