Publication | Open Access
Gemini Pro Defeated by GPT-4V: Evidence from Education
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2023
Year
Natural Language ProcessingStem EducationArtificial IntelligenceMultimodal LlmEngineeringVisual GroundingGemini ProEducation PolicyEducationMultimodal LearningAnnotationVisual Question AnsweringEducational LeadershipEducational AssessmentEducation ReformEducation ResearchHigher EducationClassification Performance
This study compared the classification performance of Gemini Pro and GPT-4V in educational settings. Employing visual question answering (VQA) techniques, the study examined both models' abilities to read text-based rubrics and then automatically score student-drawn models in science education. We employed both quantitative and qualitative analyses using a dataset derived from student-drawn scientific models and employing NERIF (Notation-Enhanced Rubrics for Image Feedback) prompting methods. The findings reveal that GPT-4V significantly outperforms Gemini Pro in terms of scoring accuracy and Quadratic Weighted Kappa. The qualitative analysis reveals that the differences may be due to the models' ability to process fine-grained texts in images and overall image classification performance. Even adapting the NERIF approach by further de-sizing the input images, Gemini Pro seems not able to perform as well as GPT-4V. The findings suggest GPT-4V's superior capability in handling complex multimodal educational tasks. The study concludes that while both models represent advancements in AI, GPT-4V's higher performance makes it a more suitable tool for educational applications involving multimodal data interpretation.