Utterance Classification with Logical Neural Network: Explainable AI for Mental Disorder Diagnosis

Yeldar Toleubay, Don Joven Agravante, Daiki Kimura, Baihan Lin, Djallel Bouneffouf, Michiaki Tatsubori
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Abstract

In response to the global challenge of mental health problems, we proposes a Logical Neural Network (LNN) based Neuro-Symbolic AI method for the diagnosis of mental disorders. Due to the lack of effective therapy coverage for mental disorders, there is a need for an AI solution that can assist therapists with the diagnosis. However, current Neural Network models lack explainability and may not be trusted by therapists. The LNN is a Recurrent Neural Network architecture that combines the learning capabilities of neural networks with the reasoning capabilities of classical logic-based AI. The proposed system uses input predicates from clinical interviews to output a mental disorder class, and different predicate pruning techniques are used to achieve scalability and higher scores. In addition, we provide an insight extraction method to aid therapists with their diagnosis. The proposed system addresses the lack of explainability of current Neural Network models and provides a more trustworthy solution for mental disorder diagnosis.
基于逻辑神经网络的话语分类:用于精神障碍诊断的可解释人工智能
针对心理健康问题的全球性挑战,我们提出了一种基于逻辑神经网络(LNN)的神经符号人工智能方法来诊断精神障碍。由于缺乏对精神障碍的有效治疗覆盖,因此需要一种可以帮助治疗师进行诊断的人工智能解决方案。然而,目前的神经网络模型缺乏可解释性,可能不被治疗师信任。LNN是一种循环神经网络架构,它结合了神经网络的学习能力和经典的基于逻辑的人工智能的推理能力。该系统使用来自临床访谈的输入谓词来输出精神障碍类别,并使用不同的谓词修剪技术来实现可扩展性和更高的分数。此外,我们还提供了一种洞察力提取方法来帮助治疗师进行诊断。该系统解决了当前神经网络模型的可解释性不足,为精神障碍诊断提供了更可靠的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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