Rubio-Campillo Xavier
Computer Applications in Science & Engineering department, Barcelona Supercomputing Centre, Barcelona, Spain.
PLoS One. 2016 Jan 5;11(1):e0146491. doi: 10.1371/journal.pone.0146491. eCollection 2016.
Computational models are increasingly being used to study historical dynamics. This new trend, which could be named Model-Based History, makes use of recently published datasets and innovative quantitative methods to improve our understanding of past societies based on their written sources. The extensive use of formal models allows historians to re-evaluate hypotheses formulated decades ago and still subject to debate due to the lack of an adequate quantitative framework. The initiative has the potential to transform the discipline if it solves the challenges posed by the study of historical dynamics. These difficulties are based on the complexities of modelling social interaction, and the methodological issues raised by the evaluation of formal models against data with low sample size, high variance and strong fragmentation.
This work examines an alternate approach to this evaluation based on a Bayesian-inspired model selection method. The validity of the classical Lanchester's laws of combat is examined against a dataset comprising over a thousand battles spanning 300 years. Four variations of the basic equations are discussed, including the three most common formulations (linear, squared, and logarithmic) and a new variant introducing fatigue. Approximate Bayesian Computation is then used to infer both parameter values and model selection via Bayes Factors.
Results indicate decisive evidence favouring the new fatigue model. The interpretation of both parameter estimations and model selection provides new insights into the factors guiding the evolution of warfare. At a methodological level, the case study shows how model selection methods can be used to guide historical research through the comparison between existing hypotheses and empirical evidence.
计算模型越来越多地被用于研究历史动态。这一可被称为“基于模型的历史”的新趋势,利用最近发布的数据集和创新的定量方法,基于书面资料来增进我们对过去社会的理解。形式模型的广泛应用使历史学家能够重新评估数十年前提出的、因缺乏适当定量框架而仍存在争议的假设。如果该倡议能够解决历史动态研究带来的挑战,就有可能改变这一学科。这些困难基于社会互动建模的复杂性,以及针对样本量小、方差大且高度分散的数据评估形式模型所引发的方法论问题。
这项工作基于一种受贝叶斯启发的模型选择方法,研究了一种替代评估方法。针对一个包含跨越300年的一千多次战役的数据集,检验了经典的兰彻斯特战斗定律的有效性。讨论了基本方程的四种变体,包括三种最常见的形式(线性、平方和对数)以及一种引入疲劳的新变体。然后使用近似贝叶斯计算通过贝叶斯因子来推断参数值和进行模型选择。
结果表明有决定性证据支持新的疲劳模型。对参数估计和模型选择的解释为指导战争演变的因素提供了新的见解。在方法论层面,该案例研究展示了如何通过现有假设与经验证据的比较,利用模型选择方法来指导历史研究。