Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence research. Typical networks are stacked by groups of layers that are further composed of many convolutional kernels or neurons. In network design, many hyper-parameters need to be defined heuristically before training in order to achieve high cross-validation accuracies. However, accuracy evaluation from the output layer alone is not sufficient to specify the roles of the hidden units in associated networks. This results in a significant knowledge gap between DL’s wider applications and its limited theoretical understanding. To narrow the knowledge gap, our study explores visualization techniques to illustrate the mutual information (MI) in DL ...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
International audienceThe renewal of research interest in machine learning came with the emergence o...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
International audienceThe renewal of research interest in machine learning came with the emergence o...
The success of recent deep convolutional neural networks (CNNs) depends on learning hidden represent...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
Deep Learning (DL) networks are recent revolutionary developments in artificial intelligence researc...
There is a need to better understand how generalization works in a deep learning model. The goal of ...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
International audienceThe renewal of research interest in machine learning came with the emergence o...
Although deep neural networks have achieved state-of-the-art performance in several artificial intel...
International audienceThe renewal of research interest in machine learning came with the emergence o...
The success of recent deep convolutional neural networks (CNNs) depends on learning hidden represent...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...
The popularity of deep learning has increased tremendously in recent years due to its ability to eff...