The Heart of Charani Poetry An AI Interpretation of Emotional Resonance

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Year : 2025 | Volume :12 | Issue : 01 | Page : –
By
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Bhavin Mehta,

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Hirenkumar Thakor,

  1. Assistant Professor (Ph.D. Scholar), Assistant Professor (Ph.D. Scholar), Faculty of Computer Application, Noble University, Junagadh, Gujarat, India
  2. Associate Professor, Faculty of Computer Application, Noble University, Junagadh, Gujarat, India

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Poetry has long been a means of expressing emotions and ideas, yet understanding the emotional depth within poems can be challenging using traditional computer-based tools. This study explores the emotions embedded in Charani poems, an important genre in Indian literature, through the lens of their distinctive poetic style. The primary objective is to develop a novel method of analyzing emotions in Charani poetry, contributing to the broader field of emotion analysis in literature. Drawing inspiration from the Indian concept of “Navarasa,” which categorizes nine core emotions, the study applies this framework to classify over 300 Charani poems. By grouping the poems according to the nine emotions—rasa—such as love, anger, sorrow, and joy, the study aims to provide a structured approach to understanding the emotional significance in these works. This classification not only offers deeper insights into the poetic expressions of Charani poems but also presents a more accessible method for studying emotional content across poetry genres. By connecting ancient cultural concepts with modern computational analysis, this research provides a fresh perspective on emotional content in literature.

Keywords: Charani Poems, Navarasa, Emotion Detection, Artificial Intelligence, Natural Language Processing

[This article belongs to Journal of Artificial Intelligence Research & Advances (joaira)]

How to cite this article:
Bhavin Mehta, Hirenkumar Thakor. The Heart of Charani Poetry An AI Interpretation of Emotional Resonance. Journal of Artificial Intelligence Research & Advances. 2024; 12(01):-.
How to cite this URL:
Bhavin Mehta, Hirenkumar Thakor. The Heart of Charani Poetry An AI Interpretation of Emotional Resonance. Journal of Artificial Intelligence Research & Advances. 2024; 12(01):-. Available from: https://journals.stmjournals.com/joaira/article=2024/view=0

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Regular Issue Subscription Review Article
Volume 12
Issue 01
Received 20/12/2024
Accepted 27/12/2024
Published 30/12/2024