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A general framework for learning prosodic-enhanced representation of rap lyrics

机译:学习说唱歌词的韵律增强表示的通用框架

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摘要

Learning and analyzing rap lyrics is a significant basis for many Web applications, such as music recommendation, automatic music categorization, and music information retrieval, due to the abundant source of digital music in the World Wide Web. Although numerous studies have explored the topic, knowledge in this field is far from satisfactory, because critical issues, such as prosodic information and its effective representation, as well as appropriate integration of various features, are usually ignored. In this paper, we propose a hierarchical attention variational a utoe ncoder framework (HAVAE), which simultaneously considers semantic and prosodic features for rap lyrics representation learning. Specifically, the representation of the prosodic features is encoded by phonetic transcriptions with a novel and effective strategy (i.e., rhyme2vec). Moreover, a feature aggregation strategy is proposed to appropriately integrate various features and generate prosodic-enhanced representation. A comprehensive empirical evaluation demonstrates that the proposed framework outperforms the state-of-the-art approaches under various metrics in different rap lyrics learning tasks.
机译:由于万维网中数字音乐的丰富来源,学习和分析说唱歌词是许多Web应用程序的重要基础,例如音乐推荐,自动音乐分类和音乐信息检索。尽管进行了大量研究,但该领域的知识远非令人满意,因为通常忽略诸如韵律信息及其有效表示以及各种功能的适当集成等关键问题。在本文中,我们提出了一种分级注意变体utoe编码器框架(HAVAE),该框架同时考虑了说唱歌词表示学习的语义和韵律特征。具体而言,韵律特征的表示是通过语音转录以新颖有效的策略(即Rhyme2vec)进行编码的。此外,提出了一种特征聚合策略以适当地集成各种特征并生成韵律增强的表示。全面的实证评估表明,在不同的说唱歌词学习任务中,在各种指标下,所提出的框架都优于最新方法。

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