CLAILGJun 21, 2024

Synthetic Lyrics Detection Across Languages and Genres

arXiv:2406.15231v412 citations
Originality Synthesis-oriented
AI Analysis

This addresses concerns about copyright violations and content spamming in music for artists and consumers, but it is incremental as it applies existing detection methods to a new data type.

The paper tackled the problem of detecting synthetic lyrics generated by large language models across languages and genres, finding promising results that could inform AI-generated music policies and enhance user transparency.

In recent years, the use of large language models (LLMs) to generate music content, particularly lyrics, has gained in popularity. These advances provide valuable tools for artists and enhance their creative processes, but they also raise concerns about copyright violations, consumer satisfaction, and content spamming. Previous research has explored content detection in various domains. However, no work has focused on the text modality, lyrics, in music. To address this gap, we curated a diverse dataset of real and synthetic lyrics from multiple languages, music genres, and artists. The generation pipeline was validated using both humans and automated methods. We performed a thorough evaluation of existing synthetic text detection approaches on lyrics, a previously unexplored data type. We also investigated methods to adapt the best-performing features to lyrics through unsupervised domain adaptation. Following both music and industrial constraints, we examined how well these approaches generalize across languages, scale with data availability, handle multilingual language content, and perform on novel genres in few-shot settings. Our findings show promising results that could inform policy decisions around AI-generated music and enhance transparency for users.

Foundations

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