Multimodal Large Language Models with Adaptive Preference Optimization for Sequential Recommendation
Yu Wang, Yonghui Yang, Le Wu, Yi Zhang, Fei Liu, Richang Hong

TL;DR
This paper introduces HaNoRec, a multimodal LLM framework that improves sequential recommendation by adaptively optimizing user preferences through hardness-aware and noise-regularized methods, addressing cross-modal bias.
Contribution
It proposes a novel training paradigm that dynamically balances sample difficulty and enhances cross-modal semantic alignment in multimodal recommendation models.
Findings
HaNoRec outperforms existing methods on benchmark datasets.
Dynamic weighting improves training on hard examples.
Gaussian perturbation reduces modality bias.
Abstract
Recent advances in Large Language Models (LLMs) have opened new avenues for sequential recommendation by enabling natural language reasoning over user behavior sequences. A common approach formulates recommendation as a language modeling task, where interaction histories are transformed into prompts and user preferences are learned via supervised fine-tuning. However, these methods operate solely in the textual modality and often miss users' fine-grained interests, especially when shaped by rich visual signals such as product images or movie posters. Multimodal Large Language Models (MLLMs) offer a promising alternative by aligning text and vision in a shared semantic space. A prevalent training paradigm applies Supervised Fine-Tuning (SFT) followed by Direct Preference Optimization (DPO) to model user preferences. Yet, two core challenges remain: 1) Imbalanced sample hardness, where…
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