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首页> 外文期刊>Frontiers in Psychology >Connecting Social Psychology and Deep Reinforcement Learning: A Probabilistic Predictor on the Intention to Do Home-Based Physical Activity After Message Exposure
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Connecting Social Psychology and Deep Reinforcement Learning: A Probabilistic Predictor on the Intention to Do Home-Based Physical Activity After Message Exposure

机译:连接社会心理学和深度加固学习:概率预测因素在消息曝光后做基于家庭的身体活动的概率预测因子

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Previous research has shown that sending personalized messages consistent with the recipient's psychological profile is essential to activate the change toward a healthy lifestyle. In this paper we present an example of how artificial intelligence can support psychology in this process, illustrating the development of a probabilistic predictor in the form of a Dynamic Bayesian Network (DBN). The predictor regards the change in the intention to do home-based physical activity after message exposure. The data used to construct the predictor are those of a study on the effects of framing in communication to promote physical activity at home during the Covid-19 lockdown. The theoretical reference is that of psychosocial research on the effects of framing, according to which similar communicative contents formulated in different ways can be differently effective depending on the characteristics of the recipient. Study participants completed a first questionnaire aimed at measuring the psychosocial dimensions involved in doing physical activity at home. Next, they read recommendation messages formulated with one of four different frames (gain, non-loss, non-gain, and loss). Finally, they completed a second questionnaire measuring their perception of the messages and again the intention to exercise at home. The collected data were analyzed to elicit a DBN, i.e., a probabilistic structure representing the interrelationships between all the dimensions considered in the study. The adopted procedure was aimed to achieve a good balance between explainability and predictivity. The elicited DBN was found to be consistent with the psychosocial theories assumed as reference and able to predict the effectiveness of the different messages starting from the relevant psychosocial dimensions of the recipients. In the next steps of our project, the DBN will form the basis for the training of a Deep Reinforcement Learning (DRL) system for the synthesis of automatic interaction strategies. In turn, the DRL system will train a Deep Neural Network (DNN) that will guide the online interaction process. The discussion focuses on the advantages of the proposed procedure in terms of interpretability and effectiveness.
机译:以前的研究表明,发送与收件人的心理概况一致的个性化消息对于激活对健康生活方式的变化至关重要。在本文中,我们展示了人工智能如何在该过程中支持心理学的示例,示出了以动态贝叶斯网络(DBN)形式的概率预测器的发展。预测因子在消息曝光后做基于家庭的身体活动的意图变化。用于构建预测器的数据是关于框架在Covid-19锁定期间促进家庭体育活动的影响的研究。理论参考是对框架效果的心理社会研究的研究,根据其不同方式配制的类似交际内容可以根据接受者的特征与不同方式不同。学习参与者完成了旨在测量在家中涉及体育活动的心理社会维度的第一个调查问卷。接下来,他们读取由四个不同帧中的一个配制的推荐消息(增益,不损失,非增益和丢失)。最后,他们完成了第二次调查问卷,测量了他们对消息的看法,并再次在家中锻炼的意图。分析收集的数据以引发DBN,即表示在研究中考虑的所有尺寸之间的相互关系的概率结构。通过的程序旨在在解释性和预测性之间实现良好的平衡。发现引发的DBN与假定作为参考的心理社会理论一致,能够预测从接受者的相关心理社会维度开始的不同信息的有效性。在我们项目的下一步中,DBN将为培训深度加强学习(DRL)系统的培训,以合成自动互动策略。反过来,DRL系统将培训一个深度神经网络(DNN),指导在线交互过程。讨论侧重于拟议程序在可意识性和有效性方面的优势。

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