2022
DOI: 10.4018/978-1-6684-5892-1.ch010
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Analysis of Ethical Development for Public Policies in the Acquisition of AI-Based Systems

Abstract: The exponential growth of AI and its applications in different areas of society, such as the financial, agricultural, telecommunications, or health sectors, poses new challenges for the government's public sector, mainly in regulating these systems. Governments and entities in general address these challenges by formulating soft laws such as manuals or guidelines. They seek full transparency, privacy, and bias reduction when implementing an AI-based system, including its life cycle and respective data manageme… Show more

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Cited by 3 publications
(1 citation statement)
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“…However, the ultimate goal is to identify those MCI patients who are most likely to develop AD, particularly in the early stages, where prediction is crucial for healthcare professionals in providing optimal patient care. Moreover, assembling a larger image dataset while adhering to ethical principles ( Tabares-Soto et al, 2022 ) and aiming to minimize data-induced bias in the models can positively impact the detection capabilities and, more importantly, the generalization ability of the models, which is essential for developing viable CAD systems. Furthermore, it is vital to conduct in-depth analysis of the results using visualization or interpretation techniques, such as activation maps, occlusion sensitivity, or gradient-based heat maps.…”
Section: Discussionmentioning
confidence: 99%
“…However, the ultimate goal is to identify those MCI patients who are most likely to develop AD, particularly in the early stages, where prediction is crucial for healthcare professionals in providing optimal patient care. Moreover, assembling a larger image dataset while adhering to ethical principles ( Tabares-Soto et al, 2022 ) and aiming to minimize data-induced bias in the models can positively impact the detection capabilities and, more importantly, the generalization ability of the models, which is essential for developing viable CAD systems. Furthermore, it is vital to conduct in-depth analysis of the results using visualization or interpretation techniques, such as activation maps, occlusion sensitivity, or gradient-based heat maps.…”
Section: Discussionmentioning
confidence: 99%

Anxiety in Young People: Analysis from a Machine Learning Model

Tabares Tabares,
Vélez Álvarez,
Bernal Salcedo
et al. 2024
Preprint