This paper reports some recent results from the empirical evaluation of different types of structured molecular representations used in QSPR analysis through a Recursive Neural Network (RNN) model, which allows for their direct use without the need for measuring or computing molecular descriptors. This RNN methodology has been applied to the prediction of the properties of small molecules and polymers. In particular, three different descriptions of cyclic moieties, namely group, template and cycle break have been proposed. The effectiveness of the proposed method in dealing with different representations of chemical structures, either specifically designed or of more general use, has been demonstrated by its application to data sets encompa...
Here we present an overview of a new approach to cheminformatics based on recursive neural networks....
The aim of this paper is to introduce the reader to new developments in Neural Networks and Kernel M...
Quantitative structure–activity relationship (QSAR) and quantitative structure–property relationship...
In the past few years, a novel approach in cheminformatics for the Quantitative Structure-Property R...
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...
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
We propose a new approach for predicting polymer properties from structured molecular representation...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
A recursive neural network QSPR model that can take directly molecular Structures as input was appli...
We present the application of Cascade Correlation for structures to QSPR (quantitative structure-pro...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
Here we present an overview of a new approach to cheminformatics based on recursive neural networks....
The aim of this paper is to introduce the reader to new developments in Neural Networks and Kernel M...
Quantitative structure–activity relationship (QSAR) and quantitative structure–property relationship...
In the past few years, a novel approach in cheminformatics for the Quantitative Structure-Property R...
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...
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
We propose a new approach for predicting polymer properties from structured molecular representation...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
A recursive neural network QSPR model that can take directly molecular Structures as input was appli...
We present the application of Cascade Correlation for structures to QSPR (quantitative structure-pro...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
An application of recursive cascade correlation (CC) neural networks to quantitative structure-activ...
Here we present an overview of a new approach to cheminformatics based on recursive neural networks....
The aim of this paper is to introduce the reader to new developments in Neural Networks and Kernel M...
Quantitative structure–activity relationship (QSAR) and quantitative structure–property relationship...