Machine learning algorithms, such as neural networks, create better predictive models when having access to larger datasets. In many domains, such as medicine and finance, each institute has only access to limited amounts of data, and creating larger datasets typically requires collaboration. However, there are privacy related constraints on these collaborations for legal, ethical, and competitive reasons. In this work, we present a feasible protocol for learning neural networks in a collaborative way while preserving the privacy of each record. This is achieved by combining Differential Privacy and Secure Multi-Party Computation with Machine Learning
Machine learning techniques receive significant responsibilities, despite growing privacy concerns. ...
Using machine learning to improve health care has gained popularity. However, most research in machi...
As machine learning and artificial intelligence (ML/AI) are becoming more popular and advanced, ther...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
We consider training machine learning models using data located on multiple private and geographical...
We address the problem of learning a machine learning model from training data that originates at mu...
Neural networks have become tremendously successful in recent times due to larger computing power a...
Neural networks have a wide range of promise for image prediction, but in the current setting of neu...
Collaborative machine learning is a promising paradigm that allows multiple participants ...
A critical concern in data-driven decision making is to build models whose outcomes do not discrimin...
As artificial intelligence becomes more and more prevalent, machine learning algorithms are being us...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Privacy restrictions of sensitive data repositories imply that the data analysis is performed in iso...
In this paper, we address the problem of privacy-preserving training and evaluation of neural networ...
Machine learning techniques receive significant responsibilities, despite growing privacy concerns. ...
Using machine learning to improve health care has gained popularity. However, most research in machi...
As machine learning and artificial intelligence (ML/AI) are becoming more popular and advanced, ther...
Machine learning has assumed an increasingly important role in Artificial Intelligence in recent yea...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
We consider training machine learning models using data located on multiple private and geographical...
We address the problem of learning a machine learning model from training data that originates at mu...
Neural networks have become tremendously successful in recent times due to larger computing power a...
Neural networks have a wide range of promise for image prediction, but in the current setting of neu...
Collaborative machine learning is a promising paradigm that allows multiple participants ...
A critical concern in data-driven decision making is to build models whose outcomes do not discrimin...
As artificial intelligence becomes more and more prevalent, machine learning algorithms are being us...
Machine learning applications in fields where data is sensitive, such as healthcare and banking, fac...
Privacy restrictions of sensitive data repositories imply that the data analysis is performed in iso...
In this paper, we address the problem of privacy-preserving training and evaluation of neural networ...
Machine learning techniques receive significant responsibilities, despite growing privacy concerns. ...
Using machine learning to improve health care has gained popularity. However, most research in machi...
As machine learning and artificial intelligence (ML/AI) are becoming more popular and advanced, ther...