RADAR: Revealing Asymmetric Development of Abilities in MLLM Pre-training
Yunshuang Nie, Bingqian Lin, Minzhe Niu, Kun Xiang, Jianhua Han, Guowei Huang, Xingyue Quan, Hang Xu, Bokui Chen, Xiaodan Liang

TL;DR
RADAR is an innovative evaluation framework that assesses the perception and reasoning abilities of pre-trained Multi-modal Large Language Models without fine-tuning, revealing asymmetric development patterns and guiding targeted improvements.
Contribution
The paper introduces RADAR, a novel ability-centric evaluation framework with a new metric and benchmark for disentangled, zero-shot assessment of MLLMs' perception and reasoning capabilities.
Findings
Reveals asymmetric development of abilities in MLLMs.
Provides a comprehensive, ability-focused evaluation method.
Highlights the impact of data volume, model size, and pretraining strategies.
Abstract
Pre-trained Multi-modal Large Language Models (MLLMs) provide a knowledge-rich foundation for post-training by leveraging their inherent perception and reasoning capabilities to solve complex tasks. However, the lack of an efficient evaluation framework impedes the diagnosis of their performance bottlenecks. Current evaluation primarily relies on testing after supervised fine-tuning, which introduces laborious additional training and autoregressive decoding costs. Meanwhile, common pre-training metrics cannot quantify a model's perception and reasoning abilities in a disentangled manner. Furthermore, existing evaluation benchmarks are typically limited in scale or misaligned with pre-training objectives. Thus, we propose RADAR, an efficient ability-centric evaluation framework for Revealing Asymmetric Development of Abilities in MLLM pRe-training. RADAR involves two key components: (1)…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Domain Adaptation and Few-Shot Learning
