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人工智能辅助学术期刊同行评议的功能需求分析
引用本文:张彤,唐慧,胡小洋,丁佐奇.人工智能辅助学术期刊同行评议的功能需求分析[J].编辑学报,2021,33(5):523-528.
作者姓名:张彤  唐慧  胡小洋  丁佐奇
作者单位:《南京航空航天大学学报》《南京航空航天大学学报(英文版)》《数据采集与处理》编辑部,210016,南京;《石河子大学学报(自然科学版)》编辑部,832003,新疆石河子;湖北大学学报编辑部,430062,武汉;中国药科大学《中国天然药物》编辑部,210009,南京
基金项目:*中国科技期刊卓越行动计划选育高水平办刊人才子项目——青年人才支持项目(2020ZZ111042);中国高校科技期刊研究会“一流高校科技期刊建设”专项基金(CUJS2021-007) 
摘    要:为剖析人工智能(AI)技术在学术期刊同行评议中应用的功能需求层次,借助魅力质量理论和Kano模型分析工具,提出人工智能辅助学术期刊同行评议功能需求的分析方法.采用问卷调查法,通过Better-Worse系数分析将9种AI辅助学术期刊同行评议的功能分为必备属性、一维属性和魅力属性3类,进一步甄别出4种需重点开发或优化的功能,并提出相应建议.研究结果为AI辅助学术期刊同行评议的功能需求分析提供了理论方法和数据支撑.

关 键 词:同行评议  学术期刊  用户需求  人工智能  Kano模型  魅力质量理论

Analysis of functional requirements for AI-assisted academic journal peer review
ZHANG Tong,TANG Hui,HU Xiaoyang,DING Zuoqi.Analysis of functional requirements for AI-assisted academic journal peer review[J].Acta Editologica,2021,33(5):523-528.
Authors:ZHANG Tong  TANG Hui  HU Xiaoyang  DING Zuoqi
Abstract:To analyze the functional requirements for artificial intelligence(AI) technology applied to academic journal peer review, a method of analysis for the functional requirements of AI-assisted academic journal peer review is proposed by introducing the attractive quality theory and the analysis tool of Kano model. The questionnaire survey method is used. Nine functions of AI-assisted academic journal peer review are divided into three categories via Better-Worse coefficient analysis, i.e., the essential attribute, the one-dimensional attribute, and the attractive attribute. Subsequently, four important functions to be developed or optimized with much emphasis are identified, and the corresponding suggestions are made. The research results provided the theoretical method and data support for the functional requirement analysis of AI-assisted academic journal peer review.
Keywords:peer review  academic journal  customer requirement  artificial intelligence  Kano model  theory of attractive quality
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