Vol. 3 No. 2 (2025): Issue Month: August, 2025
Articles

CivicXAI-Net: A Lightweight Multi-Output DistilBERT Framework for Explainable Civic Sentiment and Sarcasm Detection

Dattasmita HV
Computer Science and Engineering, Sri Siddhartha Academy of Higher Education, Tumakuru, India.
Dr. M C Supriya
Department of Computer Science and Engineering (Data Science) and AIML, Sri Siddhartha Institute of Technology, Tumakuru, India.

Published 2025-08-30

Keywords

  • CivicXAI-Net,
  • Sarcasm Detection,
  • Sentiment Analysis,
  • Explainable AI (XAI),
  • Smart Cities Mission,
  • ICCCs
  • ...More
    Less

How to Cite

HV, D., & Dr. M C Supriya. (2025). CivicXAI-Net: A Lightweight Multi-Output DistilBERT Framework for Explainable Civic Sentiment and Sarcasm Detection. International Journal of Advanced Research and Interdisciplinary Scientific Endeavours, 3(2), 842–850. https://doi.org/10.61359/11.2206-2542

Abstract

With growing reliance on real-time civic engagement systems in India's Smart Cities Mission, public opinion sentiment analysis as feedback has become most vital for responsive governance. But traditional sentiment analysis systems misinterpret sarcasm-laden discourse, especially in civic forums where rhetorical tone and passive aggression dominate citizen complaints. This paper introduces CivicXAI-Net, a lightweight, multi-output DistilBERT-based system that can sense sentiment polarity and sarcasm occurrence in parallel in civic comments. The model uses LIME and SHAP for token-wise explainability and offers interpretability in decision-making in Integrated Command and Control Centres (ICCCs).  Trained on a harmonized dataset of 1,000 civic statements with synthetic, Twitter including a self-annotated sarcasm corpus [5], CivicXAI-Net achieves stable sarcasm detection (~61% accuracy) and offers contextual insights into citizen sentiment. The architecture is optimized for edge deployment, XAI compliance, and domain adaptation for urban governance. A case study in Tumakuru Smart City ICCC demonstrates its feasibility in policy response automation, detection of service dissatisfaction zones, and improving participatory feedback loops.