Analytics, Vol. 4, Pages 13: Artificial Intelligence Applied to the Analysis of Biblical Scriptures: A Systematic Review


Analytics, Vol. 4, Pages 13: Artificial Intelligence Applied to the Analysis of Biblical Scriptures: A Systematic Review

Analytics doi: 10.3390/analytics4020013

Authors:
Bruno Cesar Lima
Nizam Omar
Israel Avansi
Leandro Nunes Castro

The Holy Bible is the most read book in the world, originally written in Aramaic, Hebrew, and Greek over a time span in the order of centuries by many people, and formed by a combination of various literary styles, such as stories, prophecies, poetry, instructions, and others. As such, the Bible is a complex text to be analyzed by humans and machines. This paper provides a systematic survey of the application of Artificial Intelligence (AI) and some of its subareas to the analysis of the Biblical scriptures. Emphasis is given to what types of tasks are being solved, what are the main AI algorithms used, and their limitations. The findings deliver a general perspective on how this field is being developed, along with its limitations and gaps. This research follows a procedure based on three steps: planning (defining the review protocol), conducting (performing the survey), and reporting (formatting the report). The results obtained show there are seven main tasks solved by AI in the Bible analysis: machine translation, authorship identification, part of speech tagging (PoS tagging), semantic annotation, clustering, categorization, and Biblical interpretation. Also, the classes of AI techniques with better performance when applied to Biblical text research are machine learning, neural networks, and deep learning. The main challenges in the field involve the nature and style of the language used in the Bible, among others.



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Bruno Cesar Lima www.mdpi.com