Integrating Behavioral Experimental Findings into Dynamical Models to Inform Social Change Interventions

Radu Tanase, Ren'e Algesheimer, Manuel S. Mariani
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Abstract

Addressing global challenges -- from public health to climate change -- often involves stimulating the large-scale adoption of new products or behaviors. Research traditions that focus on individual decision making suggest that achieving this objective requires better identifying the drivers of individual adoption choices. On the other hand, computational approaches rooted in complexity science focus on maximizing the propagation of a given product or behavior throughout social networks of interconnected adopters. The integration of these two perspectives -- although advocated by several research communities -- has remained elusive so far. Here we show how achieving this integration could inform seeding policies to facilitate the large-scale adoption of a given behavior or product. Drawing on complex contagion and discrete choice theories, we propose a method to estimate individual-level thresholds to adoption, and validate its predictive power in two choice experiments. By integrating the estimated thresholds into computational simulations, we show that state-of-the-art seeding methods for social influence maximization might be suboptimal if they neglect individual-level behavioral drivers, which can be corrected through the proposed experimental method.
将行为实验结果纳入动态模型,为社会变革干预措施提供依据
应对全球挑战--从公共卫生到气候变化--往往需要鼓励人们大规模采用新产品或新行为。关注个人决策的研究传统表明,要实现这一目标,需要更好地识别个人采用选择的驱动因素。另一方面,植根于复杂性科学的计算方法则侧重于在相互关联的采用者的社会网络中最大限度地传播特定产品或行为。这两种视角的整合虽然得到了多个研究团体的倡导,但迄今为止仍未实现。在此,我们将展示如何实现这种融合,从而为播种政策提供信息,促进特定行为或产品的大规模采用。借鉴复杂的传染和离散选择理论,我们提出了一种估算个人层面采纳阈值的方法,并在两个选择实验中验证了其预测能力。通过将估算出的阈值整合到计算模拟中,我们表明,如果最先进的社会影响力最大化播种方法忽略了个体层面的行为驱动因素,那么这些方法可能会是次优的,而我们提出的实验方法可以纠正这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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