CVDec 12, 2023

Hallucination Augmented Contrastive Learning for Multimodal Large Language Model

arXiv:2312.06968v4152 citationsh-index: 28Has CodeCVPR
Originality Incremental advance
AI Analysis

This addresses hallucinations in MLLMs, which is a critical issue for reliable multimodal AI applications, though it appears to be an incremental improvement using existing techniques.

The paper tackles the problem of hallucinations in multimodal large language models by analyzing representation distributions and introducing contrastive learning with hallucinated text as hard negatives, resulting in a 34.66%/29.5% improvement over baselines on the MMhal-Bench benchmark.

Multi-modal large language models (MLLMs) have been shown to efficiently integrate natural language with visual information to handle multi-modal tasks. However, MLLMs still face a fundamental limitation of hallucinations, where they tend to generate erroneous or fabricated information. In this paper, we address hallucinations in MLLMs from a novel perspective of representation learning. We first analyzed the representation distribution of textual and visual tokens in MLLM, revealing two important findings: 1) there is a significant gap between textual and visual representations, indicating unsatisfactory cross-modal representation alignment; 2) representations of texts that contain and do not contain hallucinations are entangled, making it challenging to distinguish them. These two observations inspire us with a simple yet effective method to mitigate hallucinations. Specifically, we introduce contrastive learning into MLLMs and use text with hallucination as hard negative examples, naturally bringing representations of non-hallucinative text and visual samples closer while pushing way representations of non-hallucinating and hallucinative text. We evaluate our method quantitatively and qualitatively, showing its effectiveness in reducing hallucination occurrences and improving performance across multiple benchmarks. On the MMhal-Bench benchmark, our method obtains a 34.66% /29.5% improvement over the baseline MiniGPT-4/LLaVA. Our code is available on https://github.com/X-PLUG/mPLUG-HalOwl/tree/main/hacl.

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