Recent advances in training deep (multi-layer) architectures have inspired a renaissance in neural network use. For example, deep convolutional networks are becoming the default option for difficult tasks on large datasets, such as image and speech recognition. However, here we show that error rates below 1% on the MNIST handwritten digit benchmark can be replicated with shallow non-convolutional neural networks. This is achieved by training such networks using the 'Extreme Learning Machine' (ELM) approach, which also enables a very rapid training time (∼ 10 minutes). Adding distortions, as is common practise for MNIST, reduces error rates even further. Our methods are also shown to be capable of achieving less than 5.5% error rates on the ...
In this paper, we propose an approximation scheme of the Kernel Extreme Learning Machine algorithm f...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
MasterThis thesis presents a fast method to train CNN classifiers through extreme learning and its c...
Recent advances in training deep (multi-layer) architectures have inspired a renaissance in neural n...
Recent advances in training deep (multi-layer) architectures have inspired a renaissance in neural n...
At present the deep neural network is the hottest topic in the domain of machine learning and can ...
Abstract. The competitive MNIST handwritten digit recognition bench-mark has a long history of broke...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
© 2020 IEEE. The classical six-layer neural network is considered. This network is used to recognize...
An enormous number of CNN classification algorithms have been proposed in the literature. Neverthele...
© Springer International Publishing AG 2017. Extreme learning machine (ELM) is a promising learning ...
Neural Networks (NN) map input data to desired output data in image processing, time series predicti...
Extreme learning machine (ELM) has been developed for single hidden layer feedforward neural network...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
The article is devoted to the problem of comparing the effectiveness of feedforward (FF) and convolu...
In this paper, we propose an approximation scheme of the Kernel Extreme Learning Machine algorithm f...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
MasterThis thesis presents a fast method to train CNN classifiers through extreme learning and its c...
Recent advances in training deep (multi-layer) architectures have inspired a renaissance in neural n...
Recent advances in training deep (multi-layer) architectures have inspired a renaissance in neural n...
At present the deep neural network is the hottest topic in the domain of machine learning and can ...
Abstract. The competitive MNIST handwritten digit recognition bench-mark has a long history of broke...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
© 2020 IEEE. The classical six-layer neural network is considered. This network is used to recognize...
An enormous number of CNN classification algorithms have been proposed in the literature. Neverthele...
© Springer International Publishing AG 2017. Extreme learning machine (ELM) is a promising learning ...
Neural Networks (NN) map input data to desired output data in image processing, time series predicti...
Extreme learning machine (ELM) has been developed for single hidden layer feedforward neural network...
In this paper we present a method for the recognition of handwritten digits and a practical implemen...
The article is devoted to the problem of comparing the effectiveness of feedforward (FF) and convolu...
In this paper, we propose an approximation scheme of the Kernel Extreme Learning Machine algorithm f...
We show that neural network classifiers with single-layer training can be applied efficiently to com...
MasterThis thesis presents a fast method to train CNN classifiers through extreme learning and its c...