Artificial intelligence: policy paper

Article Details

Reagan L. Galvez, nan, nan
Argel A. Bandala, , nan
Elmer P. Dadios, , nan
Alvin B. Culaba, , nan

Journal: Journal of Computational Innovations and Engineering Applications
Volume 4 Issue 1 (Published: 2019-07-01)

Abstract

Artificial Intelligence (AI) has grown dramatically all over the world that makes the self-driving car, image recognition, and natural language processing possible. In this paper, the current trends of AI are discussed in a global and local context. Furthermore, the common facilitating factors that make AI adoption easy are also elaborated as well as the barriers of technology adoption. Then finally, we proposed policy recommendations that will improve and maximize the applications of AI in the economy, industry, society, and government.

Keywords: artificial intelligence, expert systems, machine learning, natural language processing, robotics

DOI: https://www.dlsu.edu.ph/wp-content/uploads/pdf/research/journals/jciea/vol-4-1/1galvez.pdf
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