Privacy and Security in Digital Libraries
Advances in Library and Information Science AI-Assisted Library Reconstruction(2024)
Sri Eshwar College of Engineering
Abstract
Digital libraries, as dynamic repositories of diverse and expansive information, encounter significant privacy and security concerns that necessitate careful attention. The intersection of vast datasets, user interactions, and the imperative to maintain information accessibility amplifies the complexity of safeguarding privacy and ensuring robust security measures. Privacy concerns within digital libraries revolve around the collection and handling of user data. As users engage with the digital library, their personal information, search patterns, and preferences become integral components of the library's dataset. Striking a balance between utilizing this data for personalized services and respecting user privacy requires a delicate approach. Users rightfully demand transparency regarding data practices, the purpose of data collection, and assurance that their information is handled responsibly.
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