QUINTA:一个问题标签助手,以提高电子论坛的回答率

F. Charte, A. J. Rivera, M. J. Jesús, F. Herrera
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引用次数: 29

摘要

如今,网络被广泛用于获取几乎任何主题的信息,从科学程序到烹饪食谱。电子论坛非常受欢迎,每天都有成千上万的问题被提问和回答。正确标注用户发布的问题通常会让其他用户和专家更快更好地给出答案。本文提出了一个帮助用户标注问题的系统原型。为了完成这个任务,首先对每篇文章的文本进行处理,生成一个多标签数据集,然后使用懒惰最近邻多标签分类算法来预测新文章上的标签。所获得的结果是有希望的,为这项任务的全自动化系统的开发打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QUINTA: A question tagging assistant to improve the answering ratio in electronic forums
The Web is broadly used nowadays to obtain information about almost any topic, from scientific procedures to cooking recipes. Electronic forums are very popular, with thousands of questions asked and answered every day. Correctly tagging the questions posted by users usually produces quicker and better answers by other users and experts. In this paper a prototype of a system aimed to assist the users while tagging their questions is proposed. To accomplish this task, firstly the text of each post is processed to produce a multilabel dataset, then a lazy nearest neighbor multilabel classification algorithm is used to predict the tags on new posts. The obtained results are promising, opening the door to the developing of a full automated system for this task.
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