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Class-based tag recommendation and user-based evaluation in online audio clip sharing

机译:在线音频剪辑共享中基于类的标签推荐和基于用户的评估

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摘要

Online sharing platforms often rely on collaborative tagging systems for annotating content. In this way, users themselves annotate and describe the shared contents using textual labels, commonly called tags. These annotations typically suffer from a number of issues such as tag scarcity or ambiguous labelling. Hence, to minimise some of these issues, tag recommendation systems can be employed to suggest potentially relevant tags during the annotation process. In this work, we present a tag recommendation system and evaluate it in the context of an online platform for audio clip sharing. By exploiting domain-specific knowledge, the system we present is able to classify an audio clip among a number of predefined audio classes and to produce specific tag recommendations for the different classes. We perform an in-depth user-based evaluation of the recommendation method along with two baselines and a former version that we described in previous work. This user-based evaluation is further complemented with a prediction-based evaluation following standard information retrieval methodologies. Results show that the proposed tag recommendation method brings a statistically significant improvement over the previous method and the baselines. In addition, we report a number of findings based on the detailed analysis of user feedback provided during the evaluation process. The considered methods, when applied to real-world collaborative tagging systems, should serve the purpose of consolidating the tagging vocabulary and improving the quality of content annotations. © 2014 Elsevier B.V. All rights reserved.
机译:在线共享平台通常依赖于协作标记系统来注释内容。这样,用户自己可以使用文本标签(通常称为标签)注释和描述共享内容。这些注释通常会遇到许多问题,例如标签稀缺或标签不明确。因此,为了最小化这些问题中的一些,可以使用标签推荐系统来在注释过程中建议潜在的相关标签。在这项工作中,我们提出了一个标签推荐系统,并在一个在线平台上对音频剪辑共享进行了评估。通过利用特定领域的知识,我们介绍的系统能够在许多预定义的音频类别中对音频剪辑进行分类,并针对不同类别生成特定的标签建议。我们对推荐方法进行了基于用户的深入评估,并提供了两个基准和我们在先前工作中描述的一个以前的版本。基于标准信息检索方法,该基于用户的评估进一步得到了基于预测的评估的补充。结果表明,所提出的标签推荐方法比以前的方法和基线具有统计学上的显着改进。此外,我们根据评估过程中提供的用户反馈的详细分析报告了许多发现。所考虑的方法应用于现实世界的协作标记系统时,应达到巩固标记词汇表和提高内容注释质量的目的。 ©2014 Elsevier B.V.保留所有权利。

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