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Natural Language Processing (NLP) in Recommendation Systems

88 Citations2024
Ondongo Aucibi Adrard Guez Dellove, Kamalaraj R
International Journal of Innovative Research in Computer and Communication Engineering

This paper delves into the application of Natural Language Processing techniques in recommendation systems, specifically focusing on novel approaches to enhance recommendation accuracy and user satisfaction, and introduces a novel recommendation method termed "Knowledge Graph Embedding for Contextual Recommendation".

Abstract

This paper delves into the application of Natural Language Processing (NLP) techniques in recommendation systems, specifically focusing on novel approaches to enhance recommendation accuracy and user satisfaction. The utilization of NLP algorithms has revolutionized how content is recommended to users, leveraging linguistic analysis and machine learning to understand user preferences and provide tailored suggestions. Our research explores various NLP methodologies, including sentiment analysis, topic modelling, and semantic analysis, to extract meaningful insights from textual data. Furthermore, we investigate the integration of deep learning models, such as neural networks and transformer architectures, to capture complex patterns and improve recommendation precision. A key highlight of our study is the introduction of a novel recommendation method termed "Knowledge Graph Embedding for Contextual Recommendation." This innovative approach combines knowledge graph representation with contextual understanding, allowing for more nuanced and personalized recommendations based on user interactions, historical data, and contextual relevance. We delve into the intricacies of this technique, detailing its implementation, training process, and evaluation metrics.