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FORECASTING EFFECTS OF MISO ACTIONS: AN ABM METHODOLOGY

机译:预测微动作的效果:ABM方法

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摘要

Agent-based models (ABM) have been used successfully in the field of generative social science to discover parsimonious sets of factors that generate social behavior. This methodology provides an avenue to explore the spread of anti-government sentiment in populations and to compare the effects of potential Military Information Support Operations (MISO) actions. We develop an ABM to investigate factors that affect the growth of rebel uprisings in a notional population. Our ABM expands the civil violence model developed by Epstein by enabling communication between agents through a genetic algorithm and by adding the ability of agents to form friendships based on shared beliefs. We examine the distribution of opinion and size of sub-populations of rebel and imprisoned civilians, and compare two counterpropaganda strategies. Analysis identifies several factors with effects that can explain some real-world observations, and provides a methodology for MISO operators to compare the effectiveness of potential actions.
机译:基于代理的模型(ABM)已成功地用于生成型社会科学领域,以发现产生社会行为的简约因素集。这种方法为探索反政府情绪在人群中的传播以及比较潜在的军事信息支持行动(MISO)行动的效果提供了途径。我们开发了ABM,以研究影响名义人口中反叛起义增长的因素。我们的ABM扩展了Epstein开发的民事暴力模型,它通过遗传算法实现了特工之间的交流,并增加了特工基于共同信念形成友谊的能力。我们研究了反叛和被监禁平民的舆论分布和亚人群规模,并比较了两种反宣传策略。分析确定了几个影响因素,这些因素可以解释一些现实世界的观察结果,并为MISO运营商提供了一种比较潜在行动有效性的方法。

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