Artificial Neural Networks (ANNs) are weighted directed graphs of interconnected neurons widely employed to model complex problems. However, the selection of the optimal ANN architecture and its training parameters is not enough to obtain reliable models. The data preprocessing stage is fundamental to improve the model’s performance. Specifically, Feature Normalisation (FN) is commonly utilised to remove the features’ magnitude aiming at equalising the features’ contribution to the model training. Nevertheless, this work demonstrates that the FN method selection affects the model performance. Also, it is well-known that ANNs are commonly considered a “black box” due to their lack of interpretability. In this sense, several works aim to anal...
Mathematical modelling is used routinely to understand the coding properties and dynamics of respons...
Feature selection and inference through modeling are combined into one method based on a network tha...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selectedare Conne...
In this paper, we are focusing on the problem of interpreting Neural Networks on the instance level....
Different features have different relevance to a particular learning problem. Some features are less...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
This paper presents a novel feature selection approach based on an incremental neural network (NN) t...
There still seems to be a misapprehension that neural networks are capable of dealing with large amo...
This work is interested in ISA methods that can manipulate synaptic weights namelyConnection Weights...
Data normalization can be useful in eliminating the effect of inconsistent ranges in some machine le...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selected are Conn...
Mathematical modelling is used routinely to understand the coding properties and dynamics of respons...
Feature selection and inference through modeling are combined into one method based on a network tha...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selectedare Conne...
In this paper, we are focusing on the problem of interpreting Neural Networks on the instance level....
Different features have different relevance to a particular learning problem. Some features are less...
The main idea of this paper is to compare feature selection methods for dimension reduction of the o...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
This paper presents a novel feature selection approach based on an incremental neural network (NN) t...
There still seems to be a misapprehension that neural networks are capable of dealing with large amo...
This work is interested in ISA methods that can manipulate synaptic weights namelyConnection Weights...
Data normalization can be useful in eliminating the effect of inconsistent ranges in some machine le...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selected are Conn...
Mathematical modelling is used routinely to understand the coding properties and dynamics of respons...
Feature selection and inference through modeling are combined into one method based on a network tha...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...