In this paper, we address the problem of privacy-preserving distributed learning and the evaluation of machine-learning models by analyzing it in the widespread MapReduce abstraction that we extend with privacy constraints. We design spindle (Scalable Privacy-preservINg Distributed LEarning), the first distributed and privacy-preserving system that covers the complete ML workflow by enabling the execution of a cooperative gradient-descent and the evaluation of the obtained model and by preserving data and model confidentiality in a passive-adversary model with up to N −1 colluding parties. spindle uses multiparty homomorphic encryption to execute parallel high-depth computations on encrypted data without significant overhead. We instantiate...
Secure aggregation protocols ensure the privacy of users' data in the federated learning settings by...
The explosion of data collection and advances in artificial intelligence and machine learning have m...
With the widespread application of machine learning (ML), data security has been a serious issue. To...
This research explores ways to effectively use distributed machine learning while preserving privac...
We consider training machine learning models using data located on multiple private and geographical...
Federated machine learning is a promising paradigm allowing organizations to collaborate toward the ...
Multi-task learning (MTL), improving learning performance by transferring information between relate...
Machine learning (ML) has been widely recognized as an enabler of the global trend of digital transf...
In this paper, we apply machine learning to distributed private data owned by multiple data owners, ...
Large-scale machine learning has recently risen to prominence in settings of both industry and acade...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Privacy-Preserving Machine Learning (PPML) has received much attention from the machine learning com...
The problem of machine learning (ML) over distributed data sources arises in a variety of domains. ...
Modern machine learning increasingly involves personal data, such as healthcare, financial and user ...
We show how multiple data-owning parties can collaboratively train several machine learning algorith...
Secure aggregation protocols ensure the privacy of users' data in the federated learning settings by...
The explosion of data collection and advances in artificial intelligence and machine learning have m...
With the widespread application of machine learning (ML), data security has been a serious issue. To...
This research explores ways to effectively use distributed machine learning while preserving privac...
We consider training machine learning models using data located on multiple private and geographical...
Federated machine learning is a promising paradigm allowing organizations to collaborate toward the ...
Multi-task learning (MTL), improving learning performance by transferring information between relate...
Machine learning (ML) has been widely recognized as an enabler of the global trend of digital transf...
In this paper, we apply machine learning to distributed private data owned by multiple data owners, ...
Large-scale machine learning has recently risen to prominence in settings of both industry and acade...
The past decade has witnessed the fast growth and tremendous success of machine learning. However, r...
Privacy-Preserving Machine Learning (PPML) has received much attention from the machine learning com...
The problem of machine learning (ML) over distributed data sources arises in a variety of domains. ...
Modern machine learning increasingly involves personal data, such as healthcare, financial and user ...
We show how multiple data-owning parties can collaboratively train several machine learning algorith...
Secure aggregation protocols ensure the privacy of users' data in the federated learning settings by...
The explosion of data collection and advances in artificial intelligence and machine learning have m...
With the widespread application of machine learning (ML), data security has been a serious issue. To...