计算机科学
创造力
位于
知识管理
生成语法
管理科学
人工智能
数据科学
心理学
经济
社会心理学
作者
Theresa Kranzle,Katelyn Sharratt
摘要
ABSTRACT Traditional techniques for evaluating creative outcomes are typically based on evaluations made by human experts. These methods suffer from challenges such as subjectivity, biases, limited availability, ‘crowding’, and high transaction costs. We propose that large language models (LLMs) can be used to overcome these shortcomings. However, there is a dearth of research comparing the performance of LLMs to traditional expert evaluations for evaluating creative outcomes such as ideas. Our study compares the alignment of expert evaluations with evaluations from the LLM GPT‐4. Our results reveal that to achieve moderate evaluation alignment with experts, LLMs require using a base framework and a spectrum‐based few‐shot prompt. We offer six theoretical contributions, shifting the focus from whether LLMs can evaluate to how specific design choices shape their alignment with human judgement. These insights are situated within broader frameworks from cognitive science, creativity theory, and machine learning. Furthermore, we outline six propositions for organizations interested in LLM‐supported evaluation methods. Key recommendations include utilizing base frameworks for large‐scale idea screening, establishing a database of evaluated ideas to optimize few‐shot performance, and leveraging AI–human collaboration for internal and external idea sourcing. Additionally, we highlight the need for privacy considerations when using third‐party LLMs for proprietary idea evaluations. This research contributes to innovation management literature by exploring methods for integrating LLM into creative evaluation processes to enhance scalability and efficiency while retaining evaluation quality.
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