The application of machine learning techniques to large and distributed data archives might result in the disclosure of sensitive information about the data subjects. Data often contain sensitive identifiable information, and even if these are protected, the excessive processing capabilities of current machine learning techniques might facilitate the identification of individuals, raising privacy concerns. To this end, we propose a decision-support framework for data anonymization, which relies on a novel approach that exploits data correlations, expressed in terms of relaxed functional dependencies (RFDs) to identify data anonymization strategies providing suitable trade-offs between privacy and data utility. Moreover, we investigate how t...
Data anonymisation is of increasing importance for allowing sharing individual data among various da...
Abstract—The k-anonymization method is a commonly used privacy-preserving technique. Previous studie...
Privacy preserving data mining deals with the effectiveness of preserving privacy and utility of the...
The application of machine learning techniques to large and distributed data archives might result i...
In the light of stringent privacy laws, data anonymization not only supports privacy preserving data...
Data privacy has been an important area of research in recent years. Dataset often consists of sensi...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Machine learning (ML) has been employed in a wide variety of domains where micro-data (i.e., persona...
Abstract — Classification is a fundamental problem in data analysis. Training a classifier requires ...
Artificial intelligence (AI) and automated decision-making have the potential to improve accuracy an...
The collection, publication, and mining of personal data have become key drivers of innovation and v...
We explore how data modification can enhance privacy by examining the connection between data modifi...
Corporations are retaining ever-larger corpuses of personal data; the frequency of breaches and corr...
In recent years, anonymization methods have emerged as an important tool to preserve individual priv...
AbstractDuring the data privacy process, the utility of datasets diminishes as sensitive information...
Data anonymisation is of increasing importance for allowing sharing individual data among various da...
Abstract—The k-anonymization method is a commonly used privacy-preserving technique. Previous studie...
Privacy preserving data mining deals with the effectiveness of preserving privacy and utility of the...
The application of machine learning techniques to large and distributed data archives might result i...
In the light of stringent privacy laws, data anonymization not only supports privacy preserving data...
Data privacy has been an important area of research in recent years. Dataset often consists of sensi...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Machine learning (ML) has been employed in a wide variety of domains where micro-data (i.e., persona...
Abstract — Classification is a fundamental problem in data analysis. Training a classifier requires ...
Artificial intelligence (AI) and automated decision-making have the potential to improve accuracy an...
The collection, publication, and mining of personal data have become key drivers of innovation and v...
We explore how data modification can enhance privacy by examining the connection between data modifi...
Corporations are retaining ever-larger corpuses of personal data; the frequency of breaches and corr...
In recent years, anonymization methods have emerged as an important tool to preserve individual priv...
AbstractDuring the data privacy process, the utility of datasets diminishes as sensitive information...
Data anonymisation is of increasing importance for allowing sharing individual data among various da...
Abstract—The k-anonymization method is a commonly used privacy-preserving technique. Previous studie...
Privacy preserving data mining deals with the effectiveness of preserving privacy and utility of the...