Traditional clustering algorithms require data to be centralized on a single machine or in a datacenter. Due to privacy issues and traffic limitations, in several real applications data cannot be transferred, thus hampering the effectiveness of traditional clustering algorithms, which can operate only on locally stored data. In the last years a new paradigm has been gaining popularity: Federated Learning (FL). FL enables the collaborative training of data mining models and, at the same time, preserves data locally at the data owners’ places, decoupling the ability to perform machine learning from the need to transfer data. In this context, we propose the federated version of the popular fuzzy -means clustering algorithm. We first describe t...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
My thesis work is in the federated learning scenario, where different devices, within the same netwo...
Federated Learning (FL) provides a promising solution for preserving privacy in learning shared mode...
We consider a foundational unsupervised learning task of $k$-means data clustering, in a federated l...
Federated Learning (FL) is one of the leading learning paradigms for enabling a more significant pre...
Federated Learning (FL) is one of the leading learning paradigms for enabling a more significant pre...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Traditional clustering algorithms require data to be centralized on a single machine or in a datacen...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
Federated learning is becoming increasingly popular to enable automated learning in distributed netw...
My thesis work is in the federated learning scenario, where different devices, within the same netwo...
Federated Learning (FL) provides a promising solution for preserving privacy in learning shared mode...
We consider a foundational unsupervised learning task of $k$-means data clustering, in a federated l...
Federated Learning (FL) is one of the leading learning paradigms for enabling a more significant pre...
Federated Learning (FL) is one of the leading learning paradigms for enabling a more significant pre...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...
Training of machine learning models in a Datacenter, with data originated from edge nodes, incurs hi...