Mind meets machine: Unravelling GPT-4’s cognitive psychology

Sifatkaur Dhingra , Manmeet Singh , Vaisakh S.B. , Neetiraj Malviya , Sukhpal Singh Gill
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Abstract

Cognitive psychology delves on understanding perception, attention, memory, language, problem-solving, decision-making, and reasoning. Large Language Models (LLMs) are emerging as potent tools increasingly capable of performing human-level tasks. The recent development in the form of Generative Pre-trained Transformer 4 (GPT-4) and its demonstrated success in tasks complex to humans exam and complex problems has led to an increased confidence in the LLMs to become perfect instruments of intelligence. Although GPT-4 report has shown performance on some cognitive psychology tasks, a comprehensive assessment of GPT-4, via the existing well-established datasets is required. In this study, we focus on the evaluation of GPT-4’s performance on a set of cognitive psychology datasets such as CommonsenseQA, SuperGLUE, MATH and HANS. In doing so, we understand how GPT-4 processes and integrates cognitive psychology with contextual information, providing insight into the underlying cognitive processes that enable its ability to generate the responses. We show that GPT-4 exhibits a high level of accuracy in cognitive psychology tasks relative to the prior state-of-the-art models. Our results strengthen the already available assessments and confidence on GPT-4’s cognitive psychology abilities. It has significant potential to revolutionise the field of Artificial Intelligence (AI), by enabling machines to bridge the gap between human and machine reasoning.

思维与机器相遇:破解GPT-4的认知心理学
认知心理学研究理解感知、注意力、记忆、语言、解决问题、决策和推理。大型语言模型(LLM)正在成为一种强大的工具,越来越能够执行人类级别的任务。Generative Pre-trained Transformer 4(GPT-4)形式的最新发展及其在人类复杂任务、考试和复杂问题方面的成功证明,增强了人们对LLM成为完美智能工具的信心。尽管GPT-4报告显示了一些认知心理学任务的表现,但需要通过现有的成熟数据集对GPT-4进行全面评估。在本研究中,我们重点评估了GPT-4在一组认知心理学数据集上的表现,如CommonsenseQA、SuperGLUE、MATH和HANS。通过这样做,我们了解了GPT-4是如何处理认知心理学并将其与上下文信息相结合的,从而深入了解其产生反应的潜在认知过程。我们发现,与先前最先进的模型相比,GPT-4在认知心理学任务中表现出较高的准确性。我们的研究结果加强了对GPT-4认知心理能力的现有评估和信心。它具有巨大的潜力,可以通过使机器弥合人类和机器推理之间的差距,彻底改变人工智能领域。
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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