Ethics and Artificial Intelligence Adoption
- URL: http://arxiv.org/abs/2412.00330v1
- Date: Sat, 30 Nov 2024 03:08:15 GMT
- Title: Ethics and Artificial Intelligence Adoption
- Authors: Martim Veiga, Carlos J. Costa,
- Abstract summary: The aim of this work is to understand the possibility of adopting Artificial Intelligence nowadays in our society.
The proposed model has been tested and validated through Structural equation modeling based on data taken back from the respondents' answers.
- Score: 0.0
- License:
- Abstract: In recent years, we have witnessed a marked development and growth in Artificial Intelligence. The growth of the data volume generated by sensors and machines, combined with the information flow resulting from the user actions on the Internet, with high investments of the governments and the companies in this area, provided the practice and developed the algorithms of the Artificial Intelligence However, the people, in general, started to feel a particular fear regarding the security and privacy of their data and the theme of the Artificial Intelligence Ethics began to be discussed more regularly. The investigation aim of this work is to understand the possibility of adopting Artificial Intelligence nowadays in our society, having, as a mandatory assumption, Ethics and respect towards data and people's privacy. With that purpose in mind, a model has been created, mainly supported by the theories that were used to create the model. The suggested model has been tested and validated through Structural equation modeling based on data taken back from the respondents' answers to the questionnaire online: 237 answers, mainly from the Investigation Technologies area. The results obtained enabled the validation of seven of the nine investigation hypotheses of the proposed model. It was impossible to confirm any association between the Social Influence construct and the variables of Behavioral Intention and the Use of Artificial Intelligence. The aim of this work was accomplished once the investigation theme was validated and proved that it is possible to adopt Artificial Intelligence in our society, using the Attitude Towards Ethical Behavioral construct as the mainstay of the model.
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