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Autori principali: Preintner, Tobias, Yuan, Weixuan, Huang, Qi, König, Adrian, Bäck, Thomas, Raponi, Elena, van Stein, Niki
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.06030
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author Preintner, Tobias
Yuan, Weixuan
Huang, Qi
König, Adrian
Bäck, Thomas
Raponi, Elena
van Stein, Niki
author_facet Preintner, Tobias
Yuan, Weixuan
Huang, Qi
König, Adrian
Bäck, Thomas
Raponi, Elena
van Stein, Niki
contents Combining natural language and geometric shapes is an emerging research area with multiple applications in robotics and language-assisted design. A crucial task in this domain is object referent identification, which involves selecting a 3D object given a textual description of the target. Variability in language descriptions and spatial relationships of 3D objects makes this a complex task, increasing the need to better understand the behavior of neural network models in this domain. However, limited research has been conducted in this area. Specifically, when a model makes an incorrect prediction despite being provided with a seemingly correct object description, practitioners are left wondering: "Why is the model wrong?". In this work, we present a method answering this question by generating counterfactual examples. Our method takes a misclassified sample, which includes two objects and a text description, and generates an alternative yet similar formulation that would have resulted in a correct prediction by the model. We have evaluated our approach with data from the ShapeTalk dataset along with three distinct models. Our counterfactual examples maintain the structure of the original description, are semantically similar and meaningful. They reveal weaknesses in the description, model bias and enhance the understanding of the models behavior. Theses insights help practitioners to better interact with systems as well as engineers to improve models.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06030
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Why Are You Wrong? Counterfactual Explanations for Language Grounding with 3D Objects
Preintner, Tobias
Yuan, Weixuan
Huang, Qi
König, Adrian
Bäck, Thomas
Raponi, Elena
van Stein, Niki
Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
Combining natural language and geometric shapes is an emerging research area with multiple applications in robotics and language-assisted design. A crucial task in this domain is object referent identification, which involves selecting a 3D object given a textual description of the target. Variability in language descriptions and spatial relationships of 3D objects makes this a complex task, increasing the need to better understand the behavior of neural network models in this domain. However, limited research has been conducted in this area. Specifically, when a model makes an incorrect prediction despite being provided with a seemingly correct object description, practitioners are left wondering: "Why is the model wrong?". In this work, we present a method answering this question by generating counterfactual examples. Our method takes a misclassified sample, which includes two objects and a text description, and generates an alternative yet similar formulation that would have resulted in a correct prediction by the model. We have evaluated our approach with data from the ShapeTalk dataset along with three distinct models. Our counterfactual examples maintain the structure of the original description, are semantically similar and meaningful. They reveal weaknesses in the description, model bias and enhance the understanding of the models behavior. Theses insights help practitioners to better interact with systems as well as engineers to improve models.
title Why Are You Wrong? Counterfactual Explanations for Language Grounding with 3D Objects
topic Artificial Intelligence
Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2505.06030