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Main Authors: Wen, Farong, Guo, Yijin, Wang, Junying, Xiao, Jiaohao, Zhou, Yingjie, Shen, Ye, Jia, Qi, Li, Chunyi, Zhang, Zicheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.00883
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author Wen, Farong
Guo, Yijin
Wang, Junying
Xiao, Jiaohao
Zhou, Yingjie
Shen, Ye
Jia, Qi
Li, Chunyi
Zhang, Zicheng
author_facet Wen, Farong
Guo, Yijin
Wang, Junying
Xiao, Jiaohao
Zhou, Yingjie
Shen, Ye
Jia, Qi
Li, Chunyi
Zhang, Zicheng
contents The rapid development of Multimodal Large Language Models (MLLM) has led to a wide range of MLLM applications, and a number of benchmark datasets have sprung up in order to assess MLLM abilities. However, full-coverage Q&A testing on large-scale data is resource-intensive and time-consuming. To address this issue, we propose the MLLM Interview (MITV) strategy, which aims to quickly obtain MLLM performance metrics by quizzing fewer question. First, First, we constructed the interview dataset, which was built on an existing MLLM assessment dataset, by adding difficulty labels based on the performance of some typical MLLMs in this dataset. Second, we propose an MLLM Interview strategy, which obtains an initial performance situation of the large model by quizzing a small number of topics and then continuously tries to test the model's limits. Through extensive experiments, the result shows that the MITV strategy proposed in this paper performs well on MLLM benchmark datasets, and it is able to obtain the model evaluation capability faster through a small number of questions and answers.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00883
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Improve MLLM Benchmark Efficiency through Interview
Wen, Farong
Guo, Yijin
Wang, Junying
Xiao, Jiaohao
Zhou, Yingjie
Shen, Ye
Jia, Qi
Li, Chunyi
Zhang, Zicheng
Computation and Language
The rapid development of Multimodal Large Language Models (MLLM) has led to a wide range of MLLM applications, and a number of benchmark datasets have sprung up in order to assess MLLM abilities. However, full-coverage Q&A testing on large-scale data is resource-intensive and time-consuming. To address this issue, we propose the MLLM Interview (MITV) strategy, which aims to quickly obtain MLLM performance metrics by quizzing fewer question. First, First, we constructed the interview dataset, which was built on an existing MLLM assessment dataset, by adding difficulty labels based on the performance of some typical MLLMs in this dataset. Second, we propose an MLLM Interview strategy, which obtains an initial performance situation of the large model by quizzing a small number of topics and then continuously tries to test the model's limits. Through extensive experiments, the result shows that the MITV strategy proposed in this paper performs well on MLLM benchmark datasets, and it is able to obtain the model evaluation capability faster through a small number of questions and answers.
title Improve MLLM Benchmark Efficiency through Interview
topic Computation and Language
url https://arxiv.org/abs/2506.00883