RaTA-Tool: Retrieval-based Tool Selection with Multimodal Large Language Models
arXiv cs.CV / 4/17/2026
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Key Points
- The paper introduces RaTA-Tool, a retrieval-based framework for selecting tools in open-world multimodal settings where existing methods often rely on text-only inputs and closed-world assumptions.
- RaTA-Tool uses a multimodal LLM to transform a user’s multimodal request into a structured task description, then selects the best tool by matching that representation against semantically rich, machine-readable tool descriptions.
- The retrieval-based design is intended to generalize to tools not seen during training and to support extensibility to new tools without retraining.
- The framework improves task-to-tool alignment with a preference-based optimization stage using Direct Preference Optimization (DPO), and provides a new dataset for open-world multimodal tool use using standardized tool descriptions from Hugging Face model cards.
- Experiments reported in the study show substantial gains in tool-selection performance, especially under open-world multimodal conditions.

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