Pirolli Peter, Lebiere Christian, Orr Mark
Institute for Human and Machine Cognition, Pensacola, FL, United States.
School of Computer Science, Carnegie Mellon University, Pittsburgh, PA, United States.
Front Psychol. 2023 Jan 13;13:981983. doi: 10.3389/fpsyg.2022.981983. eCollection 2022.
We present a computational cognitive model that incorporates and formalizes aspects of theories of individual-level behavior change and present simulations of COVID-19 behavioral response that modulates transmission rates. This formalization includes addressing the psychological constructs of attitudes, self-efficacy, and motivational intensity. The model yields signature phenomena that appear in the oscillating dynamics of mask wearing and the effective reproduction number, as well as the overall increase of rates of mask-wearing in response to awareness of an ongoing pandemic.
我们提出了一个计算认知模型,该模型整合了个体层面行为改变理论的各个方面并将其形式化,还展示了调节传播率的新冠疫情行为反应模拟。这种形式化包括处理态度、自我效能感和动机强度等心理结构。该模型产生了一些标志性现象,这些现象出现在戴口罩行为和有效繁殖数的振荡动态中,以及随着对持续大流行的认知,戴口罩率的整体上升。