2023
DOI: 10.13052/jwe1540-9589.2253
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Improving Ranking Using Hybrid Custom Embedding Models on Persian Web

Shekoofe Bostan,
Ali Mohammad Zareh Bidoki,
Mohammad-Reza Pajoohan

Abstract: Ranking plays a crucial role in information retrieval systems, especially in the context of web search engines. This article presents a new ranking approach that utilizes semantic vectors and embedding models to enhance the accuracy of web document ranking, particularly in languages with complex structures like Persian. The article utilizes two real-world datasets, one obtained through web crawling to collect a large-scale Persian web corpus, and the other consisting of real user queries and web documents labe… Show more

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