小说中以用户为中心的情绪分类

Hyerim Cho, Wan-Chen Lee, Li-Min Huang, Joe Kohlburn
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引用次数: 0

摘要

读者以非常主观的方式表达情绪,然而用户对他们消费的媒体的理解的潜在结构对检索和访问具有重要意义。用户的发音起初可能看起来过于特殊,但是有意义地组织它们具有相当大的潜力,可以为所有相关人员提供更好的搜索体验。本研究以归纳的方式发展情绪分类,以供资讯系统中的小说组织与检索之用。设计/方法/方法作者对76位小说读者进行了一项开放式调查,以了解他们对小说中情感元素的偏好。从小说读者的反应中,研究小组确定了161个情绪术语,并用它们进行进一步分类。归纳方法得出了30个类别,包括愤怒、舒适、黑暗和怀旧。结果包括三个重叠的情绪家族:情感,语气/叙事和氛围/背景,这反过来又与先前研究中连接读者生成数据和概念框架的结构有关。“情绪”固有的复杂性不应该阻止研究人员在这方面仔细调查用户的偏好。除了专家们对情绪进行分类的现有努力之外,目前的研究还提出了实际最终用户在描述小说中不同情绪时提供的情绪术语。这项研究为创建用于检索和描述的分类法以及从用户提供的术语派生的结构提供了一个有用的路线图,这些术语最终有可能改善用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
User-centered categorization of mood in fiction
PurposeReaders articulate mood in deeply subjective ways, yet the underlying structure of users' understanding of the media they consume has important implications for retrieval and access. User articulations might at first seem too idiosyncratic, but organizing them meaningfully has considerable potential to provide a better searching experience for all involved. The current study develops mood categories inductively for fiction organization and retrieval in information systems.Design/methodology/approachThe authors developed and distributed an open-ended survey to 76 fiction readers to understand their preferences with regard to the affective elements in fiction. From the fiction reader responses, the research team identified 161 mood terms and used them for further categorization.FindingsThe inductive approach resulted in 30 categories, including angry, cozy, dark and nostalgic. Results include three overlapping mood families: Emotion, Tone/Narrative, and Atmosphere/Setting, which in turn relate to structures that connect reader-generated data with conceptual frameworks in previous studies.Originality/valueThe inherent complexity of “mood” should not dissuade researchers from carefully investigating users' preferences in this regard. Adding to the existing efforts of classifying moods conducted by experts, the current study presents mood terms provided by actual end-users when describing different moods in fiction. This study offers a useful roadmap for creating taxonomies for retrieval and description, as well as structures derived from user-provided terms that ultimately have the potential to improve user experience.
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