Graduate School of Informatics, Nagoya University, Nagoya, Japan.
NTT Communication Science Laboratories, NTT Corporation, Chiyoda, Japan.
Sci Rep. 2024 Feb 16;14(1):3868. doi: 10.1038/s41598-024-53989-y.
If a dialogue system can predict the personality of a user from dialogue, it will enable the system to adapt to the user's personality, leading to better task success and user satisfaction. In a recent study, personality prediction was performed using the Myers-Briggs Type Indicator (MBTI) personality traits with a task-oriented human-machine dialogue using an end-to-end (neural-based) system. However, it is still not clear whether such prediction is generally possible for other types of systems and user personality traits. To clarify this, we recruited 378 participants, asked them to fill out four personality questionnaires covering 25 personality traits, and had them perform three rounds of human-machine dialogue with a pipeline task-oriented dialogue system or an end-to-end task-oriented dialogue system. We also had another 186 participants do the same with an open-domain dialogue system. We then constructed BERT-based models to predict the personality traits of the participants from the dialogues. The results showed that prediction accuracy was generally better with open-domain dialogue than with task-oriented dialogue, although Extraversion (one of the Big Five personality traits) could be predicted equally well for both open-domain dialogue and pipeline task-oriented dialogue. We also examined the effect of utilizing different types of dialogue on personality prediction by conducting a cross-comparison of the models trained from the task-oriented and open-domain dialogues. As a result, we clarified that the open-domain dialogue cannot be used to predict personality traits from task-oriented dialogue, and vice versa. We further analyzed the effects of system utterances, task performance, and the round of dialogue with regard to the prediction accuracy.
如果对话系统能够从对话中预测用户的个性,它将使系统能够适应用户的个性,从而提高任务成功率和用户满意度。在最近的一项研究中,使用 Myers-Briggs 类型指标 (MBTI) 人格特质,通过端到端(基于神经的)系统进行了面向任务的人机对话,实现了人格预测。然而,对于其他类型的系统和用户人格特质,这种预测是否普遍可行仍不清楚。为了澄清这一点,我们招募了 378 名参与者,要求他们填写涵盖 25 个人格特质的四个人格问卷,并让他们与管道任务导向的对话系统或端到端任务导向的对话系统进行三轮人机对话。我们还让另外 186 名参与者与开放领域对话系统进行同样的操作。然后,我们构建了基于 BERT 的模型,从对话中预测参与者的人格特质。结果表明,虽然外向性(五大人格特质之一)可以平等地用于开放领域对话和管道任务导向的对话,但与任务导向的对话相比,开放领域对话的预测准确性通常更好。我们还通过对来自任务导向和开放领域对话的模型进行交叉比较,检查了利用不同类型对话对人格预测的影响。结果表明,开放领域对话不能用于从任务导向对话中预测人格特质,反之亦然。我们进一步分析了系统话语、任务表现和对话轮次对预测准确性的影响。