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Automatic Question Tagging Using Multi-label Classification in Community Question Answering Sites

机译:在社区问答站点中使用多标签分类的自动问题标记

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Community question answering sites facilitate their users to ask question and get answer from other users who has the knowledge to answer the questions. CQA sites uses tags to categorize questions into several topics so that users can easily find out the questions useful to them and related to their field of expertise. The task of annotating tags to question cannot be entirely left on users because sometimes it may happens that user who asks the question do not know the accurate tags for the question being asked. Questions with correct and accurate tags are informative and likely to get good answers. In this paper, we present a model to automatically provide tags to a question asked. We considered the problem of annotating tags to a question as a multi-label classification task. Multi-label classification is implemented to formulate question tagging as it allows adding multiple labels to a single instance. To evaluate the presented model, a set of evaluation parameters such as accuracy, hamming loss, and zero-one loss are used. The obtained results are remarkable in automatic question tagging.
机译:社区问题解答站点使他们的用户可以提问并从其他有知识的用户那里得到答案。 CQA网站使用标签将问题分类为几个主题,以便用户可以轻松地找到对他们有用并与他们的专业领域相关的问题。为问题添加注释标签的任务不能完全留给用户,因为有时可能会发生这样的情况:提出问题的用户不知道所问问题的准确标签。带有正确和准确标签的问题很有参考价值,并且可能会得到很好的答案。在本文中,我们提出了一个模型,该模型可自动为提出的问题提供标签。我们考虑了将问题注释标签作为多标签分类任务。实现多标签分类以制定问题标记,因为它允许将多个标签添加到单个实例。为了评估提出的模型,使用了一组评估参数,例如准确性,汉明损失和零一损失。所获得的结果在自动问题标记中非常出色。

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