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Autori principali: Abdullah, Abdulhady Abas, Daneshfar, Fatemeh, Mirjalili, Seyedali, Oussalah, Mourad
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.00224
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author Abdullah, Abdulhady Abas
Daneshfar, Fatemeh
Mirjalili, Seyedali
Oussalah, Mourad
author_facet Abdullah, Abdulhady Abas
Daneshfar, Fatemeh
Mirjalili, Seyedali
Oussalah, Mourad
contents Aligning large language models (LLMs) with human preferences is commonly done via reinforcement learning from human feedback (RLHF) with Proximal Policy Optimization (PPO) or, more simply, via Direct Preference Optimization (DPO). While DPO is stable and RL-free, it treats preferences as flat winner vs. loser signals and is sensitive to noisy or brittle preferences arising from fragile chains of thought. We propose TUR-DPO, a topology- and uncertainty-aware variant of DPO that rewards how answers are derived, not only what they say, by eliciting lightweight reasoning topologies and combining semantic faithfulness, utility, and topology quality into a calibrated uncertainty signal. A small learnable reward is factorized over these signals and incorporated into an uncertainty-weighted DPO objective that remains RL-free and relies only on a fixed or moving reference policy. Empirically, across open 7-8B models and benchmarks spanning mathematical reasoning, factual question answering, summarization, and helpful/harmless dialogue, TUR-DPO improves judge win-rates, faithfulness, and calibration relative to DPO while preserving training simplicity and avoiding online rollouts. We further observe consistent gains in multimodal and long-context settings, and show that TUR-DPO matches or exceeds PPO on reasoning-centric tasks while maintaining operational simplicity.
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publishDate 2026
record_format arxiv
spellingShingle TUR-DPO: Topology- and Uncertainty-Aware Direct Preference Optimization
Abdullah, Abdulhady Abas
Daneshfar, Fatemeh
Mirjalili, Seyedali
Oussalah, Mourad
Artificial Intelligence
Aligning large language models (LLMs) with human preferences is commonly done via reinforcement learning from human feedback (RLHF) with Proximal Policy Optimization (PPO) or, more simply, via Direct Preference Optimization (DPO). While DPO is stable and RL-free, it treats preferences as flat winner vs. loser signals and is sensitive to noisy or brittle preferences arising from fragile chains of thought. We propose TUR-DPO, a topology- and uncertainty-aware variant of DPO that rewards how answers are derived, not only what they say, by eliciting lightweight reasoning topologies and combining semantic faithfulness, utility, and topology quality into a calibrated uncertainty signal. A small learnable reward is factorized over these signals and incorporated into an uncertainty-weighted DPO objective that remains RL-free and relies only on a fixed or moving reference policy. Empirically, across open 7-8B models and benchmarks spanning mathematical reasoning, factual question answering, summarization, and helpful/harmless dialogue, TUR-DPO improves judge win-rates, faithfulness, and calibration relative to DPO while preserving training simplicity and avoiding online rollouts. We further observe consistent gains in multimodal and long-context settings, and show that TUR-DPO matches or exceeds PPO on reasoning-centric tasks while maintaining operational simplicity.
title TUR-DPO: Topology- and Uncertainty-Aware Direct Preference Optimization
topic Artificial Intelligence
url https://arxiv.org/abs/2605.00224