Embedding Inversion via Conditional Masked Diffusion Language Models
Abstract
Embedding inversion is performed through conditional masked diffusion with parallel token recovery via iterative denoising, achieving high accuracy and similarity scores.
We frame embedding inversion as conditional masked diffusion, recovering all tokens in parallel through iterative denoising rather than sequential autoregressive generation. A masked diffusion language model is conditioned on the target embedding via adaptive layer normalization, requiring only 8 forward passes through a 78M parameter model with no access to the target encoder. On 32-token sequences across three embedding models, the method achieves 81.3% token accuracy and 0.87 cosine similarity.
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