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Main Authors: de Araújo, George Corrêa, Maia, Helena de Almeida, Pedrini, Helio
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.18177
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author de Araújo, George Corrêa
Maia, Helena de Almeida
Pedrini, Helio
author_facet de Araújo, George Corrêa
Maia, Helena de Almeida
Pedrini, Helio
contents In this paper, we present the Scrapbook framework, a novel methodology designed to generate extensive datasets for probing the learned concepts of artificial intelligence (AI) models. The framework focuses on fundamental concepts such as object recognition, absolute and relative positions, and attribute identification. By generating datasets with a large number of questions about individual concepts and a wide linguistic variation, the Scrapbook framework aims to validate the model's understanding of these basic elements before tackling more complex tasks. Our experimental findings reveal that, while contemporary models demonstrate proficiency in recognizing and enumerating objects, they encounter challenges in comprehending positional information and addressing inquiries with additional constraints. Specifically, the MobileVLM-V2 model showed significant answer disagreements and plausible wrong answers, while other models exhibited a bias toward affirmative answers and struggled with questions involving geometric shapes and positional information, indicating areas for improvement in understanding and consistency. The proposed framework offers a valuable instrument for generating diverse and comprehensive datasets, which can be utilized to systematically assess and enhance the performance of AI models.
format Preprint
id arxiv_https___arxiv_org_abs_2509_18177
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Framework for Generating Artificial Datasets to Validate Absolute and Relative Position Concepts
de Araújo, George Corrêa
Maia, Helena de Almeida
Pedrini, Helio
Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
In this paper, we present the Scrapbook framework, a novel methodology designed to generate extensive datasets for probing the learned concepts of artificial intelligence (AI) models. The framework focuses on fundamental concepts such as object recognition, absolute and relative positions, and attribute identification. By generating datasets with a large number of questions about individual concepts and a wide linguistic variation, the Scrapbook framework aims to validate the model's understanding of these basic elements before tackling more complex tasks. Our experimental findings reveal that, while contemporary models demonstrate proficiency in recognizing and enumerating objects, they encounter challenges in comprehending positional information and addressing inquiries with additional constraints. Specifically, the MobileVLM-V2 model showed significant answer disagreements and plausible wrong answers, while other models exhibited a bias toward affirmative answers and struggled with questions involving geometric shapes and positional information, indicating areas for improvement in understanding and consistency. The proposed framework offers a valuable instrument for generating diverse and comprehensive datasets, which can be utilized to systematically assess and enhance the performance of AI models.
title A Framework for Generating Artificial Datasets to Validate Absolute and Relative Position Concepts
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2509.18177