In the past few years, a novel approach in cheminformatics for the Quantitative Structure-Property Relationship (QSPR) analysis of Physical, chemical and biological properties of chemical compounds was developed at the University of Pisa. This methodology is based on the direct treatement of molecular structure, without using numerical descriptors, and employs recursive neural networks. In subsequent studies it was successfully used to predict varoius properties of different classes of compounds. It is a promising tool in the evaluation of existing substances, as well as in the design of new materials. This master thesis fucuses on the prediction of the properties of polymers, a problem not easily treatable with traditional methods based on...
The accurate prediction of polymer properties from the chemical structure of their monomeric repeat ...
Artificial neural networks (ANNs) have been successfully used in the past to predict different prope...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
In this paper, we report on the potential of a recently developed neural network for structures appl...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
In this paper, we report on the potential of a recently developed neural network for structures appl...
Here we present an overview of a new approach to cheminformatics based on recursive neural networks....
We propose a new approach for predicting polymer properties from structured molecular representation...
A recursive neural network QSPR model that can take directly molecular Structures as input was appli...
In this work convolutional-fully connected neural networks were designed and trained to predict the ...
This paper reports some recent results from the empirical evaluation of different types of structure...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
Materials science is of fundamental significance to science and technology because our industrial ba...
The accurate prediction of polymer properties from the chemical structure of their monomeric repeat ...
Artificial neural networks (ANNs) have been successfully used in the past to predict different prope...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
In this paper, we report on the potential of a recently developed neural network for structures appl...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
In this paper, we report on the potential of a recently developed neural network for structures appl...
Here we present an overview of a new approach to cheminformatics based on recursive neural networks....
We propose a new approach for predicting polymer properties from structured molecular representation...
A recursive neural network QSPR model that can take directly molecular Structures as input was appli...
In this work convolutional-fully connected neural networks were designed and trained to predict the ...
This paper reports some recent results from the empirical evaluation of different types of structure...
The recursive neural networks deal with prediction tasks for compounds represented in a structured d...
In this paper we apply a recursive neural network (RNN) model to the prediction of the standard Gibb...
Materials science is of fundamental significance to science and technology because our industrial ba...
The accurate prediction of polymer properties from the chemical structure of their monomeric repeat ...
Artificial neural networks (ANNs) have been successfully used in the past to predict different prope...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....