Towards Highly Secure Yet Efficient KNN Classification Scheme on Outsourced Cloud Data

2019 
Nowadays, outsourcing data and machine learning tasks, e.g., k-nearest neighbour (KNN) classification, to clouds has become a scalable and cost-effective way for large scale data storage, management, and processing. However, data security and privacy issue has been a serious concern in outsourcing data to clouds. In this work, we propose a privacy-preserving KNN classification scheme on cloud data in a twin-cloud model based on an additively homomorphic cryptosystem and secret sharing. Compared with existing works, we redesign a set of lightweight building blocks, such as secure square Euclidean distance, secure comparison, secure sorting, secure minimum and maximum number finding and secure frequency calculating, which achieve the same security level but with higher efficiency. In our scheme, data owners stay off-line, which is different from secure-multiparty computation based solutions which require data owners’ stay on-line during computation. In addition, query users do not interact with the cloud except sending query data and receiving the query results. Our security analysis shows that the scheme protects outsourced data security and query privacy, and hides access patterns. Experiments on real-world dataset indicate that our scheme is significantly more efficient than existing schemes.
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