CaLMFlow: Volterra Flow Matching using Causal Language Models
We introduce CaLMFlow (Causal Language Models for Flow Matching), a novel framework that casts flow matching as a Volterra integral equation (VIE), leveraging the power of large language models (LLMs) for continuous data generation. CaLMFlow enables the direct application of LLMs to learn complex fl...
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Zusammenfassung: | We introduce CaLMFlow (Causal Language Models for Flow Matching), a novel
framework that casts flow matching as a Volterra integral equation (VIE),
leveraging the power of large language models (LLMs) for continuous data
generation. CaLMFlow enables the direct application of LLMs to learn complex
flows by formulating flow matching as a sequence modeling task, bridging
discrete language modeling and continuous generative modeling. Our method
implements tokenization across space and time, thereby solving a VIE over these
domains. This approach enables efficient handling of high-dimensional data and
outperforms ODE solver-dependent methods like conditional flow matching (CFM).
We demonstrate CaLMFlow's effectiveness on synthetic and real-world data,
including single-cell perturbation response prediction, showcasing its ability
to incorporate textual context and generalize to unseen conditions. Our results
highlight LLM-driven flow matching as a promising paradigm in generative
modeling, offering improved scalability, flexibility, and context-awareness. |
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DOI: | 10.48550/arxiv.2410.05292 |