AbstractThe anonymization of health data streams is important to protect these data against potential privacy breaches. A large number of research studies aiming at offering privacy in the context of data streams has been recently conducted. However, the techniques that have been proposed in these studies generate a significant delay during the anonymization process, since they concentrate on applying existing privacy models (e.g., k-anonymity and l-diversity) to batches of data extracted from data streams in a period of time. In this paper, we present delay-free anonymization, a framework for preserving the privacy of electronic health data streams. Unlike existing works, our method does not generate an accumulation delay, since input stre...
Hospitals, as data custodians, have the need to share a version of the data in hand with external re...
Most of existing privacy preserving techniques, such as k-anonymity methods, are designed for static...
Part 2: Special Session on Privacy Aware Machine Learning for Health Data Science (PAML 2016)Interna...
AbstractThe anonymization of health data streams is important to protect these data against potentia...
The existing methods for privacy preservation are available in variety of fields like social media, ...
The existing methods for privacy preservation are available in variety of fields like social media, ...
Abstract Background Publishing raw electronic health records (EHRs) may be considered as a breach of...
Even though the world is full of data with great potential to improve our living, a lot of it is out...
Recently, as the paradigm of medical services has shifted from treatment to prevention, there is a g...
Advancements in smart technology, wearable and mobile devices, and Internet of Things, have made sma...
Data streams are good models to characterize dynamic, on-line, fast and high-volume data requirement...
Healthcare data personally collected by individuals with wearable devices have become important sour...
Sharing healthcare data has become a vital requirement in healthcare system management; however, ina...
The collection, publication, and mining of personal data have become key drivers of innovation and v...
Transaction data about individuals are increasingly collected to support a plethora of applications,...
Hospitals, as data custodians, have the need to share a version of the data in hand with external re...
Most of existing privacy preserving techniques, such as k-anonymity methods, are designed for static...
Part 2: Special Session on Privacy Aware Machine Learning for Health Data Science (PAML 2016)Interna...
AbstractThe anonymization of health data streams is important to protect these data against potentia...
The existing methods for privacy preservation are available in variety of fields like social media, ...
The existing methods for privacy preservation are available in variety of fields like social media, ...
Abstract Background Publishing raw electronic health records (EHRs) may be considered as a breach of...
Even though the world is full of data with great potential to improve our living, a lot of it is out...
Recently, as the paradigm of medical services has shifted from treatment to prevention, there is a g...
Advancements in smart technology, wearable and mobile devices, and Internet of Things, have made sma...
Data streams are good models to characterize dynamic, on-line, fast and high-volume data requirement...
Healthcare data personally collected by individuals with wearable devices have become important sour...
Sharing healthcare data has become a vital requirement in healthcare system management; however, ina...
The collection, publication, and mining of personal data have become key drivers of innovation and v...
Transaction data about individuals are increasingly collected to support a plethora of applications,...
Hospitals, as data custodians, have the need to share a version of the data in hand with external re...
Most of existing privacy preserving techniques, such as k-anonymity methods, are designed for static...
Part 2: Special Session on Privacy Aware Machine Learning for Health Data Science (PAML 2016)Interna...