Litcius/Paper detail

Using Explainability to Help Children UnderstandGender Bias in AI

Gaspar Isaac Melsión, Ilaria Torre, E. Vidal, Iolanda Leite

2021Interaction Design and Children64 citationsDOIOpen Access PDF

Abstract

Machine learning systems have become ubiquitous into our society. This has raised concerns about the potential discrimination that these systems might exert due to unconscious bias present in the data, for example regarding gender and race. Whilst this issue has been proposed as an essential subject to be included in the new AI curricula for schools, research has shown that it is a difficult topic to grasp by students. We propose an educational platform tailored to raise the awareness of gender bias in supervised learning, with the novelty of using Grad-CAM as an explainability technique that enables the classifier to visually explain its own predictions. Our study demonstrates that preadolescents (N=78, age 10-14) significantly improve their understanding of the concept of bias in terms of gender discrimination, increasing their ability to recognize biased predictions when they interact with the interpretable model, highlighting its suitability for educational programs.

Topics & Concepts

NoveltyGRASPComputer scienceGender biasCurriculumArtificial intelligenceClassifier (UML)Unconscious mindMachine learningCognitive psychologyPsychologyData scienceSocial psychologyPedagogyPsychoanalysisProgramming languageExplainable Artificial Intelligence (XAI)Ethics and Social Impacts of AIMachine Learning and Data Classification