Ethics and Technical Aspects of Generative AI Models in Digital Content Creation
Journal:
arXiv
Published Date:
Dec 20, 2024
Abstract
Generative AI models like GPT-4o and DALL-E 3 are reshaping digital content
creation, offering industries tools to generate diverse and sophisticated text
and images with remarkable creativity and efficiency. This paper examines both
the capabilities and challenges of these models within creative workflows.
While they deliver high performance in generating content with creativity,
diversity, and technical precision, they also raise significant ethical
concerns. Our study addresses two key research questions: (a) how these models
perform in terms of creativity, diversity, accuracy, and computational
efficiency, and (b) the ethical risks they present, particularly concerning
bias, authenticity, and potential misuse. Through a structured series of
experiments, we analyze their technical performance and assess the ethical
implications of their outputs, revealing that although generative models
enhance creative processes, they often reflect biases from their training data
and carry ethical vulnerabilities that require careful oversight. This research
proposes ethical guidelines to support responsible AI integration into industry
practices, fostering a balance between innovation and ethical integrity.