Minimum Error Entropy (MEE) principle is an important approach in Information Theoretical Learning (ITL). It is widely applied and studied in various fields for its robustness to noise. In this paper, we study a reproducing kernel-based distributed MEE algorithm, DMEE, which is designed to work with both fully supervised data and semi-supervised data. The divide-and-conquer approach is employed, so there is no inter-node communication overhead. Similar as other distributed algorithms, DMEE significantly reduces the computational complexity and memory requirement on single computing nodes. With fully supervised data, our proved learning rates equal the minimax optimal learning rates of the classical pointwise kernel-based regressions. Under ...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...
Distributed learning refers to the problem of inferring a function when the training data are distri...
Decentralized learning algorithms empower interconnected devices to share data and computational res...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
Distributed learning of probabilistic models from multiple data repositories with minimum communicat...
We consider the semi-supervised learning problem, where a decision rule is to be learned from labele...
We consider the minimum error entropy (MEE) criterion and an empirical risk minimization learn-ing a...
The minimum error entropy (MEE) criterion has been verified as a powerful approach for non-Gaussian ...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
This book explains the minimum error entropy (MEE) concept applied to data classification machines. ...
We consider the semi-supervised learning problem, where a decision rule is to be learned from labele...
The minimum error entropy (MEE) criterion has been successfully used in fields such as parameter est...
Abstract The extreme learning machine‐based autoencoder (ELM‐AE) has attracted a lot of attention du...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...
Distributed learning refers to the problem of inferring a function when the training data are distri...
Decentralized learning algorithms empower interconnected devices to share data and computational res...
Following the basic principles of Information-Theoretic Learning (ITL), in this paper we propose Min...
Following basic principles of information-theoretic learning, in this paper, we propose a novel appr...
Distributed learning of probabilistic models from multiple data repositories with minimum communicat...
We consider the semi-supervised learning problem, where a decision rule is to be learned from labele...
We consider the minimum error entropy (MEE) criterion and an empirical risk minimization learn-ing a...
The minimum error entropy (MEE) criterion has been verified as a powerful approach for non-Gaussian ...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
This book explains the minimum error entropy (MEE) concept applied to data classification machines. ...
We consider the semi-supervised learning problem, where a decision rule is to be learned from labele...
The minimum error entropy (MEE) criterion has been successfully used in fields such as parameter est...
Abstract The extreme learning machine‐based autoencoder (ELM‐AE) has attracted a lot of attention du...
This paper motivates and precisely formulates the problem of learning from distributed data; descri...
Distributed learning refers to the problem of inferring a function when the training data are distri...
Decentralized learning algorithms empower interconnected devices to share data and computational res...