An application of recursive cascade correlation (CC) neural networks to quantitative structure-activity relationship (QSAR) studies is presented, with emphasis on the study of the internal representations developed by the neural networks. Recursive CC is a neural network model recently proposed for the processing of structured data. It allows the direct handling of chemical compounds as labeled ordered directed graphs, and constitutes a novel approach to QSAR. The adopted representation of molecular structure captures, in a quite general and flexible way, significant topological aspects and chemical functionalities for each specific class of molecules showing a particular chemical reactivity or biological activity. A class of 1,4-benzodiaze...
Artificial neural network (ANN) is a learning system based on a computational technique which can si...
The structure-activity relationships (SAR) are investigated by means of the Electronic-Topological M...
AbstractThe objective of the present work was to use artificial neural network to study the quantita...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
An application of recursive cascade correlation to the quantitative structure-activity relationships...
We present the application of Cascade Correlation for structures to QSPR (quantitative structure-pro...
The application of neural networks to the study of quantitative structure-activity relationship (QSA...
In this paper, we report on the potential of a recently developed neural network for structures appl...
In this paper, we report on the potential of a recently developed neural network for structures appl...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
Abstract This chapter critically reviews some of the important methods being used for building quant...
Quantitative Structure Activity Relationships (QSARs) are mathematical models that correlate structu...
This paper reports some recent results from the empirical evaluation of different types of structure...
A contemporary trend in computational toxicology is the prediction of toxicity endpoints and toxic m...
Artificial neural network (ANN) is a learning system based on a computational technique which can si...
The structure-activity relationships (SAR) are investigated by means of the Electronic-Topological M...
AbstractThe objective of the present work was to use artificial neural network to study the quantita...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
An application of recursive cascade correlation to the quantitative structure-activity relationships...
We present the application of Cascade Correlation for structures to QSPR (quantitative structure-pro...
The application of neural networks to the study of quantitative structure-activity relationship (QSA...
In this paper, we report on the potential of a recently developed neural network for structures appl...
In this paper, we report on the potential of a recently developed neural network for structures appl...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
Abstract This chapter critically reviews some of the important methods being used for building quant...
Quantitative Structure Activity Relationships (QSARs) are mathematical models that correlate structu...
This paper reports some recent results from the empirical evaluation of different types of structure...
A contemporary trend in computational toxicology is the prediction of toxicity endpoints and toxic m...
Artificial neural network (ANN) is a learning system based on a computational technique which can si...
The structure-activity relationships (SAR) are investigated by means of the Electronic-Topological M...
AbstractThe objective of the present work was to use artificial neural network to study the quantita...