Targeted incentives for social tipping in heterogeneous networked populations
Dhruv Mittal, F\'atima Gonz\'alez-Novo L\'opez, Sara Constantino,, Shaul Shalvi, Xiaojie Chen, V\'itor V. Vasconcelos

TL;DR
This paper develops a game-theoretic model to optimize targeted incentives for social tipping in diverse networks, considering constraints like cost and influence, to effectively promote societal behavioral change.
Contribution
It introduces a novel framework incorporating heterogeneity and local influence networks to analyze and optimize intervention strategies for social tipping.
Findings
Trade-off between preventing backsliding and promoting change.
Cost-optimal strategies depend on resistance and heterogeneity.
Targeting influence varies with network properties and intervention goals.
Abstract
Many societal challenges, such as climate change or disease outbreaks, require coordinated behavioral changes. For many behaviors, the tendency of individuals to adhere to social norms can reinforce the status quo. However, these same social processes can also result in rapid, self-reinforcing change. Interventions may be strategically targeted to initiate endogenous social change processes, often referred to as social tipping. While recent research has considered how the size and targeting of such interventions impact their effectiveness at bringing about change, they tend to overlook constraints faced by policymakers, including the cost, speed, and distributional consequences of interventions. To address this complexity, we introduce a game-theoretic framework that includes heterogeneous agents and networks of local influence. We implement various targeting heuristics based on…
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Taxonomy
TopicsHealth Systems, Economic Evaluations, Quality of Life
