Abstract
Nowadays, the management and analyses of `big data' are becoming indispensable for numerous organizations all over the world. In many cases, multiple organizations want to perform data analyses on their combined databases. Skyline query is one of the popular operations for selecting representative objects from a large database, where any other object within the database does not dominate each of the representative objects, called `skyline'. Like other data analytics operations, the multi-party skyline query can provide benefits to the participating organizations by retrieving the skyline objects from their combined databases. Such a multi-party skyline query demands the disclosure of individual parties' objects to others during the computation. But, owing to the data privacy and security concern of the present IT era, such disclosure of the individual parties' databases is strictly prohibited. Considering this issue, we are proposing a new framework for the privacy-preserving multi-party skyline query, exploiting additive homomorphic encryption along with data anonymization, perturbation, and randomization techniques. The underlying protocols within our proposed framework ensure that every participating party can identify its multi-party skyline objects without revealing the objects to others during the multi-party skyline query. The detailed privacy and security analyses show that the proposed framework can achieve the desired computation goal without privacy leakage. Besides, the performance evaluation through complexity analyses, extensive simulations, and comprehensive comparison also demonstrate the utility and the efficiency of the proposed framework.
Highlights
Organizations throughout the world are producing a vast amount of data, known as ‘big data’
In the current trend of IT, multiple organizations dealing with similar kind of services are collecting compatible big data, and have noticed the importance of analytical results that can be found from the union of their databases
RELATED WORKS The works on skyline query processing, privacy-preserving multi-party computation, and privacy-preserving skyline query are related to this research work
Summary
Organizations throughout the world are producing a vast amount of data, known as ‘big data’. In the current trend of IT, multiple organizations dealing with similar kind of services are collecting compatible big data, and have noticed the importance of analytical results that can be found from the union of their databases. The organizations may want to locate their skyline objects that are not dominated by any other object of their combined databases Such computation is very sensitive w.r.t. security and privacy challenges. To provide better and competitive suggestions for their customers, every agent may want to determine its real estates which are not dominated by any real estate of other agents In such a case, all agents need to perform the multi-party skyline query on their union databases.
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