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Semantic Search Enabled Attribute-based Access Control for Data Retrieval from Cloud

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dc.contributor.author Khan, Shahzad
dc.date.accessioned 2025-01-22T09:27:26Z
dc.date.available 2025-01-22T09:27:26Z
dc.date.issued 2025-01-22
dc.identifier.other 00000325234
dc.identifier.uri http://10.250.8.41:8080/xmlui/handle/123456789/49145
dc.description Supervised by Prof Dr. Haider Abbas en_US
dc.description.abstract The ongoing integration of the Internet of Things (IoT) with evolving wireless communica-tion technology leads to the generation of multimodal data. The rising popularity of cloud computing is instrumental in providing on-demand and ubiquitous storage and computa-tion resources for handling this multimodal Big Data. The growing acceptance of cloud computing results from its inherent flexibility and economic advantages gained through out sourcing. This inclination is not a matter of preference but a deliberate design decision for various organizational and personnel-level applications. Nevertheless, in the context of cloud computing, the privacy and security aspects emerge as significant apprehensions when individuals and organizations entrust their private data to public cloud servers for access by authenticated users. The cloud server is typically viewed as an untrusted entity, leading to potential data exposure risks to third parties or even the cloud service provider. While searchable encryption, as a cryptographic primitive, has effectively addressed se curity concerns by enabling searches on encrypted data, it introduces certain limitations. Firstly, it imposes a challenge for non-expert users by requiring precise recall of the key word. Secondly, in today’s multimodal data scenario, this primitive operates exclusively on a single data type. Deep learning natural language processing (NLP) models can enable semantic-aware searches, interpreting queries based on context and intent rather than just exact keywords, even for those without domain expertise. However, contemporary schemes integrating deep learning-based models into searchable encryption (SE) predominantly op-erate within single-owner/single-user settings. This prevalent approach significantly restricts the adaptability and versatility of cloud storage solutions. At the same time, the solidified SE framework for multimodal data is still a challenging issue in the multi-owner/multi-user (M/M) setting. This thesis presents a generalized and solidified semantic-aware SE framework using attribute-based encryption. The proposed framework enables information retrieval from layperson search query formulation, which lacks specialized domain knowledge. It rep resents the first achievement of the M/M setting in the deep-learning model using the secure transfer learning technique. Furthermore, by adopting the deep learning model according to the underlying data structure, our proposed framework can seamlessly transition between structured (i.e., text/documents) and unstructured (i.e., graph and image data) data. Based on the proposed framework, this thesis presents four SE schemes. The first pro-posed SE scheme, considering the domain-specific jargon and conceptual overlapping be xi tween words that require expert interpretation for their search, utilizes the deep learning based Doc2Vec model with access control. It captures the common data user intuition behind its search query in the multi-user setting. Considering the graph structure data capability to model complicated structural data, the second scheme solves the problem of structure-aware full graph similarity search in privacy-preserving cloud computing for the first time, with access control, by utilizing the neural Graph2Vec model. Our third solution deploys CNN for better accuracy and fine-grained access control, providing a secure mechanism to ensure an identical feature space for image users in the verifiable multi-owner multi-user setting. Our last solution leverages the capabilities of blockchain’s smart contract mechanism to es tablish a multi-attribute authority SE scheme. Integrating smart contracts avoids dependence on a single trusted entity within an ABE infrastructure. Instead, it facilitates the consensus based generation of user private keys and system-wide global parameters in a mutual distrust scenario (M/M setting). en_US
dc.language.iso en en_US
dc.publisher MCS en_US
dc.title Semantic Search Enabled Attribute-based Access Control for Data Retrieval from Cloud en_US
dc.type Thesis en_US


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