The topic of big data has attracted increasing interest in recent years. The emergence of big data leads to new difficulties in terms of protection models used for data privacy, which is of necessity for sharing and processing data. Protecting individuals’ sensitive information while maintaining the usability of the data set published is the most important challenge in privacy preserving. In this regard, data anonymization methods are utilized in order to protect data against identity disclosure and linking attacks. In this study, a novel data anonymization algorithm based on chaos and perturbation has been proposed for privacy and utility preserving in big data. The performance of the proposed algorithm is evaluated in terms of Kullb...
Data anonymization is required before a big-data business can run effectively without compromising t...
Maximizing data usage and minimizing privacy risk are two conflicting goals. Organizations always ap...
Data privacy has been studied in the area of statistics (statistical disclosure control) and compute...
The topic of big data has attracted increasing interest in recent years. The emergence of big data l...
Big data needs to be kept private because of the increase in the amount of data. Data is generated f...
Recently, Big Data processing becomes crucial to most enterprise and government applications due to ...
Data Analytics is widely used as a means of extracting useful information from available data. It is...
With the technology's rapid development and its involvement in all areas of our lives, the volume an...
AbstractData Anonymization is one of the globally accepted mechanisms for the protection of privacy ...
Abstract. One of the most well studied models of privacy preservation is k-anonymity. Previous studi...
The vast amount of data being collected about individuals has brought new challenges in protecting t...
Datasets containing private and sensitive information are useful for data analytics. Data owners cau...
Advances in information technology, and its use in research, are increasing both the need for anonym...
Privacy Preserving takes more attention in data mining because now a days people registers every day...
The recent advancements in this digital world huge amount of information are generated and shared, a...
Data anonymization is required before a big-data business can run effectively without compromising t...
Maximizing data usage and minimizing privacy risk are two conflicting goals. Organizations always ap...
Data privacy has been studied in the area of statistics (statistical disclosure control) and compute...
The topic of big data has attracted increasing interest in recent years. The emergence of big data l...
Big data needs to be kept private because of the increase in the amount of data. Data is generated f...
Recently, Big Data processing becomes crucial to most enterprise and government applications due to ...
Data Analytics is widely used as a means of extracting useful information from available data. It is...
With the technology's rapid development and its involvement in all areas of our lives, the volume an...
AbstractData Anonymization is one of the globally accepted mechanisms for the protection of privacy ...
Abstract. One of the most well studied models of privacy preservation is k-anonymity. Previous studi...
The vast amount of data being collected about individuals has brought new challenges in protecting t...
Datasets containing private and sensitive information are useful for data analytics. Data owners cau...
Advances in information technology, and its use in research, are increasing both the need for anonym...
Privacy Preserving takes more attention in data mining because now a days people registers every day...
The recent advancements in this digital world huge amount of information are generated and shared, a...
Data anonymization is required before a big-data business can run effectively without compromising t...
Maximizing data usage and minimizing privacy risk are two conflicting goals. Organizations always ap...
Data privacy has been studied in the area of statistics (statistical disclosure control) and compute...