Multimodal Approaches to Fair Image Classification: An Ethical Perspective
Javon Hickmon

TL;DR
This paper investigates how multimodal techniques combining visual data with other modalities can improve fairness and reduce bias in image classification systems, emphasizing ethical considerations and practical implications.
Contribution
It introduces novel multimodal methods to mitigate biases in image classification and evaluates their effectiveness in promoting ethical AI practices.
Findings
Multimodal approaches enhance fairness in image classification.
Proposed methods reduce demographic biases effectively.
Ethical analysis supports responsible deployment of AI systems.
Abstract
In the rapidly advancing field of artificial intelligence, machine perception is becoming paramount to achieving increased performance. Image classification systems are becoming increasingly integral to various applications, ranging from medical diagnostics to image generation; however, these systems often exhibit harmful biases that can lead to unfair and discriminatory outcomes. Machine Learning systems that depend on a single data modality, i.e. only images or only text, can exaggerate hidden biases present in the training data, if the data is not carefully balanced and filtered. Even so, these models can still harm underrepresented populations when used in improper contexts, such as when government agencies reinforce racial bias using predictive policing. This thesis explores the intersection of technology and ethics in the development of fair image classification models.…
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Taxonomy
TopicsInternational Law and Human Rights · International Arbitration and Investment Law · Ethics and Social Impacts of AI
MethodsFocus
