The glass transition temperature is a vital property of polymers with a direct impact on their stability. In the present study, we built quantitative structure–property relationship models for the prediction of the glass transition temperatures of polymers using a data set of 206 diverse polymers. Various 2D molecular descriptors were computed from the single repeating units of polymers. We derived five models from different combinations of six descriptors in each case by employing the double cross-validation technique followed by partial least squares regression. The selected models were subsequently validated by methods such as cross-validation, external validation using test set compounds, the Y-randomization (Y-scrambling) test and an a...
We propose a chemical language processing model to predict polymers’ glass transition temperature (T...
Unique structure representation of polymers plays a crucial role in developing models for polymer pr...
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
The technique of Quantitative Structure Property Relationships has been applied to the glass transit...
The technique of Quantitative Structure Property Relationships has been applied to the glass transit...
Glass transition temperature (Tg) is the temperature at which a polymer changes from crystalline st...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
ii A polymer has drastically different physical properties above versus below some characteristic te...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
Quantitative relationships between structure and glass transition temperature Tg and of polyethylene...
A nonlinear model and a linear model have been developed to correlate glass transition temperature (...
New descriptors of main and side chains for polymers with high molecular weight are presented in ord...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
Group contribution methods have been widely used for the estimation and prediction of properties of ...
A novel QSPR model for predicting θ (lower critical solution temperature) in polymer solutions using...
We propose a chemical language processing model to predict polymers’ glass transition temperature (T...
Unique structure representation of polymers plays a crucial role in developing models for polymer pr...
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...
The technique of Quantitative Structure Property Relationships has been applied to the glass transit...
The technique of Quantitative Structure Property Relationships has been applied to the glass transit...
Glass transition temperature (Tg) is the temperature at which a polymer changes from crystalline st...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
ii A polymer has drastically different physical properties above versus below some characteristic te...
The glass transition temperature, Tg, is one of the most important properties of amorphous polymers....
Quantitative relationships between structure and glass transition temperature Tg and of polyethylene...
A nonlinear model and a linear model have been developed to correlate glass transition temperature (...
New descriptors of main and side chains for polymers with high molecular weight are presented in ord...
The glass transition temperature (Tg) of acrylic and methacrylic random copolymers was investigated ...
Group contribution methods have been widely used for the estimation and prediction of properties of ...
A novel QSPR model for predicting θ (lower critical solution temperature) in polymer solutions using...
We propose a chemical language processing model to predict polymers’ glass transition temperature (T...
Unique structure representation of polymers plays a crucial role in developing models for polymer pr...
We propose a new method based on a Recursive Neural Network (RecNN) for predicting polymer propertie...