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Hauptverfasser: Soliman, Sara Saad, Younes, Ahmed, Elkabani, Islam, Elsayed, Ashraf
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2510.00966
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author Soliman, Sara Saad
Younes, Ahmed
Elkabani, Islam
Elsayed, Ashraf
author_facet Soliman, Sara Saad
Younes, Ahmed
Elkabani, Islam
Elsayed, Ashraf
contents Due to an information explosion on the internet, there is a need for the development of aggregated search systems that can boost the retrieval and management of content in various formats. To further improve the clustering of Arabic text data in aggregated search environments, this research investigates the application of advanced natural language processing techniques, namely stacked autoencoders and AraBERT embeddings. By transcending the limitations of traditional search engines, which are imprecise, not contextually relevant, and not personalized, we offer more enriched, context-aware characterizations of search results, so we used a K-means clustering algorithm to discover distinctive features and relationships in these results, we then used our approach on different Arabic queries to evaluate its effectiveness. Our model illustrates that using stacked autoencoders in representation learning suits clustering tasks and can significantly improve clustering search results. It also demonstrates improved accuracy and relevance of search results.
format Preprint
id arxiv_https___arxiv_org_abs_2510_00966
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Deep Learning-Based Approach for Improving Relational Aggregated Search
Soliman, Sara Saad
Younes, Ahmed
Elkabani, Islam
Elsayed, Ashraf
Information Retrieval
Artificial Intelligence
Due to an information explosion on the internet, there is a need for the development of aggregated search systems that can boost the retrieval and management of content in various formats. To further improve the clustering of Arabic text data in aggregated search environments, this research investigates the application of advanced natural language processing techniques, namely stacked autoencoders and AraBERT embeddings. By transcending the limitations of traditional search engines, which are imprecise, not contextually relevant, and not personalized, we offer more enriched, context-aware characterizations of search results, so we used a K-means clustering algorithm to discover distinctive features and relationships in these results, we then used our approach on different Arabic queries to evaluate its effectiveness. Our model illustrates that using stacked autoencoders in representation learning suits clustering tasks and can significantly improve clustering search results. It also demonstrates improved accuracy and relevance of search results.
title Deep Learning-Based Approach for Improving Relational Aggregated Search
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2510.00966