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GD-Retriever: Controllable Generative Text-Music Retrieval with Diffusion Models

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arxiv 2506.17886 v2 pith:YL6HVVUW submitted 2025-06-22 cs.SD eess.AS

GD-Retriever: Controllable Generative Text-Music Retrieval with Diffusion Models

classification cs.SD eess.AS
keywords retrievalmodelsdiffusiongenerativetext-musiccontrastivecontrolcontrollable
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multimodal contrastive models have achieved strong performance in text-audio retrieval and zero-shot settings, but improving joint embedding spaces remains an active research area. Less attention has been given to making these systems controllable and interactive for users. In text-music retrieval, the ambiguity of freeform language creates a many-to-many mapping, often resulting in inflexible or unsatisfying results. We introduce Generative Diffusion Retriever (GDR), a novel framework that leverages diffusion models to generate queries in a retrieval-optimized latent space. This enables controllability through generative tools such as negative prompting and denoising diffusion implicit models (DDIM) inversion, opening a new direction in retrieval control. GDR improves retrieval performance over contrastive teacher models and supports retrieval in audio-only latent spaces using non-jointly trained encoders. Finally, we demonstrate that GDR enables effective post-hoc manipulation of retrieval behavior, enhancing interactive control for text-music retrieval tasks.

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