Conventional incremental learning approaches in multi-layered feedforward neural networks are based on new incoming training instances. However, in this paper, changing environment is defined as new incoming features of a specific problem. Our empirical study illustrates that ISGNN, incremental self-growing neural networks, can adapt to such a changing environment with new input dimension. In the meanwhile, dynamic neural network algorithms are used for automatic network structure design in order to avoid time-consuming search for an appropriate network topology with the trial and error method. We also exploit information learned by the previous grown network so as to avoid retraining. Finally, we report simulation results on two benchmark ...
In the paper a new method to develop neural networks is proposed. The method is based on the idea of...
International audienceDeep neural networks of sizes commonly encountered in practice are proven to c...
We present a new type of constructive algorithm for incremental learning. The algorithm overcomes ma...
[[abstract]]In this paper, we applied the concepts of minimizing weight sensitivity cost and trainin...
. The reasons to use growing self-organizing networks are investigated. First an overview of several...
Abstract. The reasons to use growing self-organizing networks are investigated. First an overview of...
Deep neural networks (DNNs) have become a widely deployed model for numerous machine learning applic...
Neural networks are generally exposed to a dynamic environment where the training patterns or the in...
Conventional Neural Network (NN) training is done by introducing training patterns in the full input...
A method is presented to dynamically adapt the topology of a neural network using only the informati...
. This paper describes the forward-backward module: a simple building block that allows the evolutio...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
Self-organizing neural networks are important tools for realizing unsupervised learning. Recently, a...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Recently, it has been proposed that the biological networks change not only the synaptic strengths o...
In the paper a new method to develop neural networks is proposed. The method is based on the idea of...
International audienceDeep neural networks of sizes commonly encountered in practice are proven to c...
We present a new type of constructive algorithm for incremental learning. The algorithm overcomes ma...
[[abstract]]In this paper, we applied the concepts of minimizing weight sensitivity cost and trainin...
. The reasons to use growing self-organizing networks are investigated. First an overview of several...
Abstract. The reasons to use growing self-organizing networks are investigated. First an overview of...
Deep neural networks (DNNs) have become a widely deployed model for numerous machine learning applic...
Neural networks are generally exposed to a dynamic environment where the training patterns or the in...
Conventional Neural Network (NN) training is done by introducing training patterns in the full input...
A method is presented to dynamically adapt the topology of a neural network using only the informati...
. This paper describes the forward-backward module: a simple building block that allows the evolutio...
Abstract—We develop, in this brief, a new constructive learning algorithm for feedforward neural net...
Self-organizing neural networks are important tools for realizing unsupervised learning. Recently, a...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Recently, it has been proposed that the biological networks change not only the synaptic strengths o...
In the paper a new method to develop neural networks is proposed. The method is based on the idea of...
International audienceDeep neural networks of sizes commonly encountered in practice are proven to c...
We present a new type of constructive algorithm for incremental learning. The algorithm overcomes ma...