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Uprising of ChatGPT and Ethical Problems
3
Zitationen
2
Autoren
2023
Jahr
Abstract
Purpose: This study aims to examine ethical issues following the emergence of ChatGPT, evaluate ChatGPT with a focus on moral competence, and seek ethical solutions. Methods: This study tries to use various literature and various media reports from the East and West dealing with the technology, operation method, and ethical issues of ChatGPT. In the detailed analysis of moral problems following the emergence of ChatGPT, the satisfaction of each element was evaluated based on moral competence, and alternatives were presented. Result: As a result of the study, the ethical issues that can be raised following the emergence of ChatGPT include the possibility of plagiarism and copyright infringement, damage to the fairness of the test, use for criminal purposes, occurrence of social stereotypes and unfair discrimination, invasion of personal privacy and organization's Security exposure, reduced critical thinking, and loss of genuine human relationships. And as a result of evaluating the ethical issues of ChatGPT centering on moral competence, it is evaluated that moral identity, moral sensitivity, and moral practice are possible to implement, but moral judgment is evaluated to have many limitations. In order to solve these ethical problems, a utilitarian approach was proposed. Conclusion: The most optimal decisions and actions related to the design, development, adoption, deployment, maintenance and evolution of ChatGPT should do the most good or the least harm to society. To do this, responsible AI toolkits and frameworks must have an ethical perspective built in, allowing for a balanced view of what is right and wrong. Along with this, a multi-stakeholder approach is needed to create a good AI society.
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