Star-Agents: Automatic Data Optimization with LLM Agents for Instruction Tuning
The efficacy of large language models (LLMs) on downstream tasks usually hinges on instruction tuning, which relies critically on the quality of training data. Unfortunately, collecting high-quality and diverse data is both expensive and time-consuming. To mitigate this issue, we propose a novel Sta...
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Zusammenfassung: | The efficacy of large language models (LLMs) on downstream tasks usually
hinges on instruction tuning, which relies critically on the quality of
training data. Unfortunately, collecting high-quality and diverse data is both
expensive and time-consuming. To mitigate this issue, we propose a novel
Star-Agents framework, which automates the enhancement of data quality across
datasets through multi-agent collaboration and assessment. The framework adopts
a three-pronged strategy. It initially generates diverse instruction data with
multiple LLM agents through a bespoke sampling method. Subsequently, the
generated data undergo a rigorous evaluation using a dual-model method that
assesses both difficulty and quality. Finaly, the above process evolves in a
dynamic refinement phase, where more effective LLMs are prioritized, enhancing
the overall data quality. Our empirical studies, including instruction tuning
experiments with models such as Pythia and LLaMA, demonstrate the effectiveness
of the proposed framework. Optimized datasets have achieved substantial
improvements, with an average increase of 12% and notable gains in specific
metrics, such as a 40% improvement in Fermi, as evidenced by benchmarks like
MT-bench, Vicuna bench, and WizardLM testset. |
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DOI: | 10.48550/arxiv.2411.14497 |