Entity-Aware and Secure Query Optimization in Database Using Named Entity Recognition
Azrin Sultana, Hasibur Rashid Chayon

TL;DR
This paper introduces an innovative query optimization framework that uses Named Entity Recognition and encryption techniques to enhance privacy and efficiency in cloud database searches.
Contribution
It combines deep learning-based NER with encryption and clustering methods to improve privacy-preserving query processing in cloud databases.
Findings
DBN-LSTM achieved 93% accuracy in entity detection.
Encrypted search with blind indexing was significantly faster.
Non-sensitive data clustering improved search efficiency.
Abstract
Cloud storage has become the backbone of modern data infrastructure, yet privacy and efficient data retrieval remain significant challenges. Traditional privacy-preserving approaches primarily focus on enhancing database security but fail to address the automatic identification of sensitive information before encryption. This can dramatically reduce query processing time and mitigate errors during manual identification of sensitive information, thereby reducing potential privacy risks. To address this limitation, this research proposes an intelligent privacy-preserving query optimization framework that integrates Named Entity Recognition (NER) to detect sensitive information in queries, utilizing secure data encryption and query optimization techniques for both sensitive and non-sensitive data in parallel, thereby enabling efficient database optimization. Combined deep learning…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Data Quality and Management
