Reminiscence therapy is mental health care based on the recollection of memories. However, the effectiveness of this method varies amongst individuals. To solve this problem, it is necessary to provide more personalized support; therefore, this study utilized a computational model of personal memory recollection based on a cognitive architecture adaptive control of thought-rational (ACT-R). An ACT-R memory model reflecting the state of users is expected to facilitate personal recollection. In this study, we proposed a method for estimating the internal states of users through repeated interactions with the memory model. The model, which contains the lifelog of the user, presents a memory item (stimulus) to the user, and receives the response of the user to the stimulus, based on which it adjusts the internal parameters of the model. Through the repetition of these processes, the parameters of the model will reflect the internal states of the user. To confirm the feasibility of the proposed method, we analyzed utterances of users when using a system that incorporates this model. The results confirmed the ability of the method to estimate the memory retrieval parameters of the model from the utterances of the user. In addition, the ability of the method to estimate changes in the mood of the user caused by using the system was confirmed. These results support the feasibility of the interactive method for estimating human internal states, which will eventually contribute to the ability to induce memory recall and emotions for our well-being.
翻译:记忆记忆疗法是基于记忆记忆记忆记忆的心理保健。然而,这一方法的效力因个人而异。为了解决这个问题,有必要提供更个性化的支持;因此,这项研究使用了基于认知结构的个人记忆记忆回忆计算模型,该模型基于认知结构,对思维理性的适应性控制(ACT-R)。预计反映用户状况的ACT-R记忆模型将有助于个人回忆。在这项研究中,我们建议了一种方法,通过与记忆模型的反复互动来估计用户的内部状态。该模型包含用户的生命记录,向用户展示一个记忆(刺激)项目,并接收用户对刺激的反应,以此为基础调整模型的内部参数。通过这些进程的重复,模型参数将反映用户的内部状态。为了确认拟议方法的可行性,我们分析了用户在使用这一模型时的语调。结果证实了从用户的语调中估算模型记忆检索参数的方法的能力,向用户的记忆恢复者提供了一个记忆恢复能力,此外,通过对用户的情绪变化能力进行最终的预测,通过用户的情绪变化的方法,将使得用户的情绪分析方法能够对用户的准确性进行估计。这些方法的推算。通过用户的推算方法,将最终使用户的推算出系统能够推算结果。