Catellani Patrizia, Carfora Valentina, Piastra Marco
Department of Psychology, Catholic University of the Sacred Heart, Milan, Italy.
Computer Vision and Multimedia Lab, University of Pavia, Pavia, Italy.
Front Psychol. 2022 Feb 9;13:825602. doi: 10.3389/fpsyg.2022.825602. eCollection 2022.
Effective recommendations on healthy food choice need to be personalized and sent out on a large scale. In this paper, we present a model of automatic message selection tailored on the characteristics of the recipient and focused on the reduction of red meat consumption. This model is obtained through the collaboration between social psychologists and artificial intelligence experts. Starting from selected psychosocial models on food choices and the framing effects of recommendation messages, we involved a sample of Italian participants in an experiment in which they: (a) filled out a first questionnaire, which was aimed at detecting the psychosocial antecedents of the intention to eat red/processed meat; (b) read messages differing as to the framing of the hypothetical consequences of reducing (gain, non-loss) versus not reducing (non-gain, loss) red/processed meat consumption; (c) filled out a second questionnaire, which was aimed at detecting participants' reaction to the messages, as well as any changes in their intention to consume red/processed meat. Data collected were then employed to learn both the structure and the parameters of a Graphical Causal Model (GCM) based on a Dynamic Bayesian Network (DBN), aimed to predicting the potential effects of message delivery from the observation of the psychosocial antecedents. Such probabilistic predictor is intended as the basis for developing automated interactions strategies using Deep Reinforcement Learning (DRL) techniques. Discussion focuses on how to develop automatic interaction strategies able to foster mindful eating, thanks to (a) considering the psychosocial characteristics of the people involved; (b) sending messages tailored on these characteristics; (c) adapting interaction strategies according to people's reactions.
关于健康食物选择的有效建议需要个性化且大规模地发出。在本文中,我们提出了一个基于接收者特征定制的自动信息选择模型,该模型聚焦于减少红肉消费。这个模型是社会心理学家和人工智能专家合作的成果。从选定的关于食物选择的社会心理模型以及推荐信息的框架效应出发,我们让一组意大利参与者参与了一项实验,在实验中他们:(a)填写了第一份问卷,旨在检测食用红肉/加工肉意愿的社会心理前提;(b)阅读了关于减少(获益、非损失)与不减少(非获益、损失)红肉/加工肉消费的假设后果框架不同的信息;(c)填写了第二份问卷,旨在检测参与者对这些信息的反应以及他们食用红肉意愿的任何变化。然后,收集到的数据被用于学习基于动态贝叶斯网络(DBN)的图形因果模型(GCM)的结构和参数,该模型旨在通过观察社会心理前提来预测信息传递的潜在效果。这种概率预测器旨在作为使用深度强化学习(DRL)技术开发自动交互策略的基础。讨论聚焦于如何开发能够促进正念饮食的自动交互策略,这要归功于:(a)考虑相关人员的社会心理特征;(b)发送基于这些特征定制的信息;(c)根据人们的反应调整交互策略。