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Harvesting microblogs for contextual music similarity estimation: a co-occurrence-based framework

机译:收集微博以进行上下文音乐相似性评估:基于共现的框架

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Microtexts are a valuable, albeit noisy, source to infer collaborative information. As music plays an important role in many human lives, microblogs on music-related activities are available in abundance. This paper investigates different strategies to estimate music similarity from these data sources. In particular, we first present a framework to extract co-occurrence scores between music artists from microblogs and then investigate 12 similarity estimation functions to subsequently derive resemblance scores. We evaluate the approaches on a collection of microblogs crawled from Twitter over a period of 10 months and compare them to standard tf-idf approaches. As evaluation criteria we use precision and recall in an artist retrieval task as well as rank proximity. We show that collaborative chatter on music can be effectively used to develop music artist similarity measures, which are a core part of every music retrieval and recommendation system. Furthermore, we analyze the effects of the "long tail" on retrieval results and investigate whether results are consistent over time, using a second dataset.
机译:微文本是一种有价值的,尽管嘈杂的资源,可用来推断协作信息。由于音乐在许多人的生活中起着重要作用,因此有大量关于音乐相关活动的微博。本文研究了从这些数据源估计音乐相似性的不同策略。特别是,我们首先提出一个框架,从微博中提取音乐艺术家之间的共现分数,然后研究12个相似度估计函数,以随后得出相似度分数。我们对在10个月内从Twitter抓取的一系列微博客中的方法进行了评估,并将它们与标准tf-idf方法进行了比较。作为评估标准,我们在艺术家检索任务以及等级接近度中使用精度和召回率。我们表明,音乐上的协作性聊天可以有效地用于开发音乐艺术家相似性度量,这是每个音乐检索和推荐系统的核心部分。此外,我们使用第二个数据集来分析“长尾巴”对检索结果的影响,并研究结果是否随时间推移保持一致。

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