The paper defines the MPI task and proposes TriMPI, a three-stage training pipeline of continual pretraining, supervised finetuning, and policy-aware reinforcement learning that internalizes multimodal policies into model parameters for improved adherence without prompts at inference.
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EmbGen creates synthetic QA data by entity decomposition, embedding-based reassembly into clusters, and multi-level sampling with cluster-specific prompts, yielding up to 88.9% higher Binary Accuracy than baselines on heterogeneous datasets under fixed token budgets.
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Multimodal Policy Internalization for Conversational Agents
The paper defines the MPI task and proposes TriMPI, a three-stage training pipeline of continual pretraining, supervised finetuning, and policy-aware reinforcement learning that internalizes multimodal policies into model parameters for improved adherence without prompts at inference.
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EmbGen: Teaching with Reassembled Corpora
EmbGen creates synthetic QA data by entity decomposition, embedding-based reassembly into clusters, and multi-level sampling with cluster-specific prompts, yielding up to 88.9% higher Binary Accuracy than baselines on heterogeneous datasets under fixed token budgets.