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From Complex to Simple: Enhancing Multi-Constraint Complex Instruction Following Ability of Large Language Models

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arxiv 2404.15846 v2 pith:PRY5R5GA submitted 2024-04-24 cs.CL

From Complex to Simple: Enhancing Multi-Constraint Complex Instruction Following Ability of Large Language Models

classification cs.CL
keywords complexinstructionsconstraintstrainingabilityfollowfollowingllms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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It is imperative for Large language models (LLMs) to follow instructions with elaborate requirements (i.e. Complex Instructions Following). Yet, it remains under-explored how to enhance the ability of LLMs to follow complex instructions with multiple constraints. To bridge the gap, we initially study what training data is effective in enhancing complex constraints following abilities. We found that training LLMs with instructions containing multiple constraints enhances their understanding of complex instructions, especially those with lower complexity levels. The improvement can even generalize to compositions of out-of-domain constraints. Additionally, we further propose methods addressing how to obtain and utilize the effective training data. Finally, we conduct extensive experiments to prove the effectiveness of our methods in terms of overall performance and training efficiency. We also demonstrate that our methods improve models' ability to follow instructions generally and generalize effectively across out-of-domain, in-domain, and adversarial settings, while maintaining general capabilities.

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