面试
定性研究
定性分析
计算机科学
口译(哲学)
探索性研究
点(几何)
内容分析
数据科学
心理学
探索性分析
钥匙(锁)
透视图(图形)
语篇分析
定性性质
半结构化面试
管理科学
定量分析(化学)
应用心理学
多元方法论
协议分析
知识管理
社会技术系统
人机交互
作者
Mohammad Hossein Jarrahi
标识
DOI:10.1177/20539517251381697
摘要
In this article, we examine the application of qualitative methods for exploring and capturing the emergent behaviors and characteristics of AI systems. In doing so, we formulate key facets of the ‘interviewing AI’ framework: (1) exploratory familiarization to develop an initial understanding of the AI system's functionalities and responses, (2) systematic investigation through structured probing to elicit behaviors such as hallucinations and manifestations of reasoning, using different prompting approaches, and (3) two complementary approaches - temporal and comparative analyses of AI behavior, examining changes over time or comparing multiple systems at a single point in time. We further discuss (4) potential qualitative analysis methods such as critical discourse analysis or content analysis adapted to theorize and interpret AI behaviors, and (5) triangulation, which integrates qualitative insights from interviewing AI with other methods such as user and expert studies, public interaction records analysis, and quantitative analysis to form a multidimensional and comprehensive understanding of AI systems. Finally, we address (6) ethical considerations by emphasizing transparency, reflexivity, and responsible interpretation of findings to ensure rigorous and contextualized research practices.
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