AI-Enhanced Cross-Modal Anime Recommendation System with Explainable Deep Learning
Journal
2024 International Conference on IT Innovation and Knowledge Discovery (ITIKD)
Date Issued
2025-04-13
Author(s)
Jayabhaduri Radhakrishnan
H. Naga R. Guna Vardhan
K. Dinesh Kumar Reddy
K. Danush Kumar
B. Charan Reddy
DOI
https://doi.org/10.1109/ITIKD63574.2025.11004930
Abstract
This paper presents an innovative approach to anime recommendation systems by integrating multi-modal deep learning with explainable AI techniques. We propose a novel framework that combines visual features, textual content, and user interaction data to create more accurate and interpretable recommendations. Our system addresses key challenges in ex-isting recommendation systems, including the cold-start problem and limited content understanding, through a hybrid architecture that leverages BERT-based natural language processing and convolutional neural networks for visual analysis. Experimental results demonstrate a 27% improvement in recommendation accuracy compared to traditional methods, while providing transparent explanations for recommendations through attention visualization.
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