In this brief, heterogeneity and noise in big data are shown to increase the generalization error for a traditional learning regime utilized for deep neural networks (deep NNs). To reduce this error, while overcoming the issue of vanishing gradients, a direct error-driven learning (EDL) scheme is proposed. First, to reduce the impact of heterogeneity and data noise, the concept of a neighborhood is introduced. Using this neighborhood, an approximation of generalization error is obtained and an overall error, comprised of learning and the approximate generalization errors, is defined. A novel NN weight-tuning law is obtained through a layer-wise performance measure enabling the direct use of overall error for learning. Additional constraints...
Deep neural networks achieve stellar generalisation on a variety of problems, despite often being la...
In recent years Deep Neural Networks (DNNs) have achieved state-of-the-art results in many fields su...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
In this paper, generalization error for traditional learning regimes-based classification is demonst...
In this chapter, a comprehensive methodology is presented to address important data-driven challenge...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Empirical studies show that gradient-based methods can learn deep neural networks (DNNs) with very g...
How to train deep neural networks (DNNs) to generalize well is a central concern in deep learning, e...
Deep Neural Networks ("deep learning") have become a ubiquitous choice of algorithms for Machine Lea...
Generalization error bounds for deep neural networks trained by stochastic gradient descent (SGD) ar...
The understanding of generalization in machine learning is in a state of flux. This is partly due to...
We study gradient-based regularization methods for neural networks. We mainly focus on two regulariz...
Deep neural networks (DNNs) require large amounts of labeled data for model training. However, label...
Deep neural networks achieve stellar generalisation on a variety of problems, despite often being la...
In recent years Deep Neural Networks (DNNs) have achieved state-of-the-art results in many fields su...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
In this paper, generalization error for traditional learning regimes-based classification is demonst...
In this chapter, a comprehensive methodology is presented to address important data-driven challenge...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Error backpropagation is a highly effective mechanism for learning high-quality hierarchical feature...
Empirical studies show that gradient-based methods can learn deep neural networks (DNNs) with very g...
How to train deep neural networks (DNNs) to generalize well is a central concern in deep learning, e...
Deep Neural Networks ("deep learning") have become a ubiquitous choice of algorithms for Machine Lea...
Generalization error bounds for deep neural networks trained by stochastic gradient descent (SGD) ar...
The understanding of generalization in machine learning is in a state of flux. This is partly due to...
We study gradient-based regularization methods for neural networks. We mainly focus on two regulariz...
Deep neural networks (DNNs) require large amounts of labeled data for model training. However, label...
Deep neural networks achieve stellar generalisation on a variety of problems, despite often being la...
In recent years Deep Neural Networks (DNNs) have achieved state-of-the-art results in many fields su...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...