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Evaluating the Diversity and Quality of LLM Generated Content

Evaluating the Diversity and Quality of LLM Generated Content

来源:Arxiv_logoArxiv
英文摘要

Recent work suggests that preference-tuning techniques--including Reinforcement Learning from Human Preferences (RLHF) methods like PPO and GRPO, as well as alternatives like DPO--reduce diversity, creating a dilemma given that such models are widely deployed in applications requiring diverse outputs. To address this, we introduce a framework for measuring effective semantic diversity--diversity among outputs that meet quality thresholds--which better reflects the practical utility of large language models (LLMs). Using open-ended tasks that require no human intervention, we find counterintuitive results: although preference-tuned models--especially those trained via RL--exhibit reduced lexical and syntactic diversity, they produce greater effective semantic diversity than SFT or base models, not from increasing diversity among high-quality outputs, but from generating more high-quality outputs overall. We discover that preference tuning reduces syntactic diversity while preserving semantic diversity--revealing a distinction between diversity in form and diversity in content that traditional metrics often overlook. Our analysis further shows that smaller models are consistently more parameter-efficient at generating unique content within a fixed sampling budget, offering insights into the relationship between model scaling and diversity. These findings have important implications for applications that require diverse yet high-quality outputs, from creative assistance to synthetic data generation.

Alexander Shypula、Shuo Li、Botong Zhang、Vishakh Padmakumar、Kayo Yin、Osbert Bastani

计算技术、计算机技术

Alexander Shypula,Shuo Li,Botong Zhang,Vishakh Padmakumar,Kayo Yin,Osbert Bastani.Evaluating the Diversity and Quality of LLM Generated Content[EB/OL].(2025-04-16)[2025-04-26].https://arxiv.org/abs/2504.12522.点此复制

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