Description
The intricate tapestry of music composition, a complex interplay of artistic expression and technical expertise, has long been considered an exclusive domain of human creativity. However, the rise of artificial intelligence (AI) challenges this assumption, particularly with the emergence of Deep Learning models capable of generating music. This paper delves into the fascinating interplay between AI-powered music composition and its human counterpart. We explore the intricate landscape of recent Deep Learning models for music generation, examining their capabilities and limitations through the lens of musical language theory. By comparing these models to the established creative processes of human composers, we aim to shed light on critical open questions: Can AI truly generate music with genuine creativity? How similar are the compositional processes employed by humans and machines? By disentangling these threads, we hope to illuminate the potential and limitations of AI in music composition, paving the way for a nuanced understanding of this rapidly evolving field.
Summary
The text provides an overview of music composition with deep learning (DL), focusing on architectures like Transformers and GANs. It highlights the challenges of composing music with creativity, structure, and coherence. The paper examines various DL-based models for melody generation, multi-track music generation, and evaluates their effectiveness compared to traditional algorithmic methods. It also discusses open questions and future directions in AI music composition, including the integration of DL with probabilistic methods and the development of interactive models.