CLAIJan 1, 2024

Large language model for Bible sentiment analysis: Sermon on the Mount

arXiv:2401.00689v11 citationsh-index: 11
Originality Synthesis-oriented
AI Analysis

This work addresses sentiment analysis in religious texts for researchers in comparative religion, but it is incremental as it extends existing methods to a new dataset.

The study applied sentiment analysis to five translations of the Sermon on the Mount in the Bible, revealing varying sentiments such as humor, optimism, and empathy across chapters and verses, with significant vocabulary differences between translations.

The revolution of natural language processing via large language models has motivated its use in multidisciplinary areas that include social sciences and humanities and more specifically, comparative religion. Sentiment analysis provides a mechanism to study the emotions expressed in text. Recently, sentiment analysis has been used to study and compare translations of the Bhagavad Gita, which is a fundamental and sacred Hindu text. In this study, we use sentiment analysis for studying selected chapters of the Bible. These chapters are known as the Sermon on the Mount. We utilize a pre-trained language model for sentiment analysis by reviewing five translations of the Sermon on the Mount, which include the King James version, the New International Version, the New Revised Standard Version, the Lamsa Version, and the Basic English Version. We provide a chapter-by-chapter and verse-by-verse comparison using sentiment and semantic analysis and review the major sentiments expressed. Our results highlight the varying sentiments across the chapters and verses. We found that the vocabulary of the respective translations is significantly different. We detected different levels of humour, optimism, and empathy in the respective chapters that were used by Jesus to deliver his message.

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Foundations

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