交互式标注中的反馈模型探索

R. Graham, James Caverlee
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引用次数: 12

摘要

社交网络的基石之一是非正式的用户生成元数据(或标签),用于注释网页、图像和视频等网络对象。然而,许多现实世界的领域,如个人桌面、企业内部网和数字图书馆,由于缺乏广泛的标签理解受众,目前被排除在社会标签现象之外。因此,在本文中,我们提出了一个轻量级的交互式标签框架,为绝大多数未标记的内容提供高质量的标签建议。提出的框架的一个显著特征是它结合了用户反馈来迭代地改进标签建议。具体来说,我们描述并评估了三种反馈模型——基于标签的、基于术语的和标签协同定位的。通过广泛的用户评估和测试,我们发现反馈可以在最小的用户参与下显著提高标签质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Feedback Models in Interactive Tagging
One of the cornerstones of the Social Web is informal user-generated metadata (or tags) for annotating web objects like pages, images, and videos. However, many real-world domains are currently left out of the social tagging phenomenon due to the lack of a wide-scale tagging-savvy audience - domains like the personal desktop, enterprise intranets, and digital libraries. Hence in this paper, we propose a lightweight interactive tagging framework for providing high-quality tag suggestions for the vast majority of untagged content. One of the salient features of the proposed framework is its incorporation of user feedback for iteratively refining tag suggestions. Concretely, we describe and evaluate three feedback models - Tag-Based, Term-Based, and Tag Co-location. Through extensive user evaluation and testing, we find that feedback can significantly improve tag quality with minimal user involvement.
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