Papers by Riccardo Cantoro

    1 papers
    UniGeM: Unifying Data Selection and Mixing via Geometric Exploration and Mining (2026.findings-acl)

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    Challenge: Large Language Models (LLMs) scaling is limited by data quality and domain mixing and instance selection are two separate problems.
    Approach: They propose a framework that unifies mixing and selection without training proxy models or relying on external reference datasets.
    Outcome: The proposed framework achieves 2.0 data efficiency over a random baseline and further improves overall performance compared to SOTA methods in reasoning-heavy evaluations and multilingual generalization.

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