Enhancing search engine precision and user experience through sentiment-based polysemy resolution
Mike Nkongolo

TL;DR
This paper introduces a sentiment-based polysemy resolution method for search engines, significantly improving accuracy and user experience by better understanding query context through sentiment analysis.
Contribution
It presents a novel sentiment-based approach to differentiate meanings of polysemous keywords, enhancing search precision and relevance.
Findings
Achieved 85% accuracy with the proposed smart search function.
Outperformed conventional search engines in differentiating keyword meanings.
Validated effectiveness across multiple sentiment analysis models.
Abstract
With the proliferation of digital content and the need for efficient information retrieval, this study's insights can be applied to various domains, including news services, e-commerce, and digital marketing, to provide users with more meaningful and tailored experiences. The study addresses the common problem of polysemy in search engines, where the same keyword may have multiple meanings. It proposes a solution to this issue by embedding a smart search function into the search engine, which can differentiate between different meanings based on sentiment. The study leverages sentiment analysis, a powerful natural language processing (NLP) technique, to classify and categorize news articles based on their emotional tone. This can provide more insightful and nuanced search results. The article reports an impressive accuracy rate of 85% for the proposed smart search function, which…
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Taxonomy
TopicsSentiment Analysis and Opinion Mining · Digital Marketing and Social Media · Misinformation and Its Impacts
MethodsAttentive Walk-Aggregating Graph Neural Network
