RELATIONAL DIMENSION VERSUS ARTIFICIAL INTELLIGENCE.

Q3 Psychology
Juan Rodado, Felix Crespo
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引用次数: 0

Abstract

Thirty years ago, we proposed the similarity between the functioning of artificial intelligence and the human psyche, suggesting multiple parallels between the Freudian model proposed in the "Project for Psychology for Neurologists" and the connectionist theories applied in the generation of parallel distributed processing systems (PDP), also known as connectionist models. These models have been and continue to be the foundation of general artificial intelligences like ChatGPT, evolving and gaining prominence in everyday life. From the earliest applications in psychiatry, recreating computationally simulated modes of illnesses, to the use of deep learning models, especially in the field of computer vision for tasks such as image recognition, segmentation, and classification. Recurrent Neural Networks (RNN) and Long Short-Term Memory (LSTM) are employed for tasks involving sequences of data, such as natural language processing, or models based on the Transformer architecture, like BERT and GPT (Generative Pre-trained Transformer), which have revolutionized natural language processing. In this present work, we analyze the significance of the emergence and exponential growth of these types of tools in the field of healthcare, from medical diagnosis and patient care to psychological attention and psychotherapeutic treatment, exploring the changes and transformations in the forms of subjective expression that are arising. We also examine and argue for the importance and validity of the relational dimension proposed by our psychoanalytic approach in contrast to the potential use of these tools as treatment models.

关系维度与人工智能
三十年前,我们提出了人工智能的运作与人类心理之间的相似性,认为 "神经学家心理学项目 "中提出的弗洛伊德模型与应用于并行分布式处理系统(PDP)生成的联结主义理论(也称为联结主义模型)之间存在多种相似之处。这些模型一直是并将继续成为通用人工智能(如 ChatGPT)的基础,在日常生活中不断发展并日益突出。从最早应用于精神病学,重现计算模拟的疾病模式,到深度学习模型的使用,尤其是在计算机视觉领域的图像识别、分割和分类等任务中。循环神经网络(RNN)和长短期记忆(LSTM)被用于涉及数据序列的任务,如自然语言处理,或基于变换器架构的模型,如 BERT 和 GPT(生成预训练变换器),它们给自然语言处理带来了革命性的变化。在本作品中,我们分析了这类工具的出现和指数级增长在医疗保健领域(从医疗诊断和病人护理到心理关注和心理治疗)的意义,探讨了主观表达形式正在发生的变化和转变。我们还研究并论证了我们的精神分析方法所提出的关系维度的重要性和有效性,并与这些工具作为治疗模式的潜在用途形成对比。
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来源期刊
American Journal of Psychoanalysis
American Journal of Psychoanalysis Psychology-Clinical Psychology
CiteScore
1.60
自引率
0.00%
发文量
42
期刊介绍: The American Journal of Psychoanalysis is an international psychoanalytic quarterly founded in 1941 by Karen Horney. The journal''s purpose is to be an international forum for communicating a broad range of contemporary theoretical, clinical, professional and cultural concepts of psychoanalysis and for presenting related investigations in allied fields. It is a fully peer-reviewed journal, which welcomes psychoanalytic papers from all schools of thought that address the interests and concerns of scholars and practitioners of psychoanalysis and contribute meaningfully to the understanding of human experience. The journal publishes original papers, special issues devoted to a single topic, book reviews, film reviews, reports on the activities of the Karen Horney Psychoanalytic Center, and comments.
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