机器辅助社会心理学假设生成。

IF 12.3 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY American Psychologist Pub Date : 2024-09-01 DOI:10.1037/amp0001222
Sachin Banker, Promothesh Chatterjee, Himanshu Mishra, Arul Mishra
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引用次数: 0

摘要

社会心理学研究项目始于产生一个可检验的想法,这在很大程度上依赖于研究人员吸收、回忆和准确处理现有研究成果的能力。然而,新研究成果的指数级增长使得在众多主题中综合各种观点的任务变得极具挑战性,这可能会导致重要的研究联系被忽视。在这项研究中,我们利用社会心理学研究基于语言模型这一事实,采用大型自然语言模型来生成假设,从而帮助社会心理学研究人员开发新的研究假设。我们采用了两种方法论。在第一种方法中,我们在过去 55 年中 50 多种社会心理学期刊以及预印本库(PsyArXiv)中发表的数千篇摘要上对第三代生成预训练转换器(GPT-3)语言模型进行了微调。社会心理学专家对模型和人工生成的假设在清晰度、原创性和影响力方面的评分相似。第二种方法是不进行微调,我们使用 GPT-4 生成假设,结果发现社会心理学专家在清晰度、原创性、影响力、合理性和相关性等方面对这些生成的假设的质量评分均高于人工生成的假设。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
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Machine-assisted social psychology hypothesis generation.

Social psychology research projects begin with generating a testable idea that relies heavily on a researcher's ability to assimilate, recall, and accurately process available research findings. However, an exponential increase in new research findings is making the task of synthesizing ideas across the multitude of topics challenging, which could result in important overlooked research connections. In this research, we leverage the fact that social psychology research is based on verbal models and employ large natural language models to generate hypotheses that can aid social psychology researchers in developing new research hypotheses. We adopted two methodological approaches. In the first approach, we fine-tuned the third-generation generative pre-trained transformer (GPT-3) language model on thousands of abstracts published in more than 50 social psychology journals in the past 55 years as well as on preprint repositories (PsyArXiv). Social psychology experts rated model- and human-generated hypotheses similarly on the dimensions of clarity, originality, and impact. In the second approach, without fine-tuning, we generated hypotheses using GPT-4 and found that social psychology experts rated these generated hypotheses as higher in quality than human-generated hypotheses on dimensions of clarity, originality, impact, plausibility, and relevance. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

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来源期刊
American Psychologist
American Psychologist PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
18.50
自引率
1.20%
发文量
145
期刊介绍: Established in 1946, American Psychologist® is the flagship peer-reviewed scholarly journal of the American Psychological Association. It publishes high-impact papers of broad interest, including empirical reports, meta-analyses, and scholarly reviews, covering psychological science, practice, education, and policy. Articles often address issues of national and international significance within the field of psychology and its relationship to society. Published in an accessible style, contributions in American Psychologist are designed to be understood by both psychologists and the general public.
期刊最新文献
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