This article develops a method for simultaneous estimation of density functions for a collection of populations of protein backbone angle pairs using a data-driven, shared basis that is constructed by bivariate spline functions defined on a triangulation of the bivariate domain. The circular nature of angular data is taken into account by imposing appropriate smoothness constraints across boundaries of the triangles. Maximum penalized likelihood is used to fit the model and an alternating blockwise Newton-type algorithm is developed for computation. A simulation study shows that the collective estimation approach is statistically more efficient than estimating the densities individually. The proposed method was used to estimate neighbor-dep...
Motivated by problems of modelling torsional angles in molecules, Singh, Hnizdo & Demchuk (2002) pro...
The tendency of an amino acid to adopt certain configurations in folded proteins is treated here as ...
Code for the publications: Aviv A. Rosenberg, Nitsan Yehishalom, Ailie Marx, Alex Bronstein. "An a...
Recently, the study of protein structures using angular representations has attracted much attention...
A real-valued bivariate ‘Estimation of Distribution Algorithm’ specific for the ab initio and full-a...
Despite considerable progress in the past decades, protein structure prediction remains one of the m...
Traditional factor models explicitly or implicitly assume that the factors follow a multivariate nor...
Distributions of the backbone dihedral angles of proteins have been studied for over 40 years. While...
This thesis focusses on the development of statistical methodologies that can deal with bivariate ci...
Proteins are found in all living organisms and constitute a large group of macromolecules with many ...
Measuring the quality of determined protein structures is a very important problem in bioinformatics...
Measuring the quality of determined protein structures is a very important problem in bioin-formatic...
Proteins are found in all living organisms and constitute a large group of macromolecules with many...
Motivated by problems of modeling torsional angles in molecules, Singh et al. (2002) proposed a biva...
The protein structure prediction problem consists of determining a protein’s three-dimensional stru...
Motivated by problems of modelling torsional angles in molecules, Singh, Hnizdo & Demchuk (2002) pro...
The tendency of an amino acid to adopt certain configurations in folded proteins is treated here as ...
Code for the publications: Aviv A. Rosenberg, Nitsan Yehishalom, Ailie Marx, Alex Bronstein. "An a...
Recently, the study of protein structures using angular representations has attracted much attention...
A real-valued bivariate ‘Estimation of Distribution Algorithm’ specific for the ab initio and full-a...
Despite considerable progress in the past decades, protein structure prediction remains one of the m...
Traditional factor models explicitly or implicitly assume that the factors follow a multivariate nor...
Distributions of the backbone dihedral angles of proteins have been studied for over 40 years. While...
This thesis focusses on the development of statistical methodologies that can deal with bivariate ci...
Proteins are found in all living organisms and constitute a large group of macromolecules with many ...
Measuring the quality of determined protein structures is a very important problem in bioinformatics...
Measuring the quality of determined protein structures is a very important problem in bioin-formatic...
Proteins are found in all living organisms and constitute a large group of macromolecules with many...
Motivated by problems of modeling torsional angles in molecules, Singh et al. (2002) proposed a biva...
The protein structure prediction problem consists of determining a protein’s three-dimensional stru...
Motivated by problems of modelling torsional angles in molecules, Singh, Hnizdo & Demchuk (2002) pro...
The tendency of an amino acid to adopt certain configurations in folded proteins is treated here as ...
Code for the publications: Aviv A. Rosenberg, Nitsan Yehishalom, Ailie Marx, Alex Bronstein. "An a...