In this data pervasive world, the efficient and accurate modelling of data is crucial to support reliable analyses and to improve the solution to related problems. In order to describe the given data, the problem of selecting a suitable model has to be carefully addressed. Traditional approaches to the problem of optimal model selection have relied predominantly on the number of model parameters rather than the actual parameters themselves. This limits the ability of traditional methods to correctly distinguish among models that, while being of different type, have the same number of model parameters. In order to address the problem of model selection satisfactorily, this thesis explores the Bayesian information-theoretic principle of minim...
Several computer algorithms for discovering patterns in groups of protein sequences are in use that ...
We regard histogram density estimation as a model selection problem. Our approach is based on the ...
Abstract—In maximum entropy method, one chooses a distri-bution from a set of distributions that max...
The tendency of an amino acid to adopt certain configurations in folded proteins is treated here as ...
© 2019 Dr. Chi Kuen WongMinimum Message Length (MML) is a Bayesian framework for model selection and...
The information criterion of minimum message length (MML) provides a powerful statistical framework ...
In the field of bioinformatics, a wide range of techniques are used to computationally predict prope...
Abstract Background The aim of protein design is to predict amino-acid sequences compatible with a g...
: Statistics based inference methods like minimum message length (MML) and minimum description lengt...
Abstract—Simplified lattice models have played an important role in protein structure prediction and...
The focus of this thesis is on developing methods of integrating heterogeneous biological feature se...
Constructing an accurate model for the thermally accessible states of an Intrinsically Disordered Pr...
Abstract Background Protein structure comparison is a central issue in structural bioinformatics. Th...
Proteins are found in all living organisms and constitute a large group of macromolecules with many ...
Probabilistic graphical models (PGM) efficiently encode a probability distribution on a large set of ...
Several computer algorithms for discovering patterns in groups of protein sequences are in use that ...
We regard histogram density estimation as a model selection problem. Our approach is based on the ...
Abstract—In maximum entropy method, one chooses a distri-bution from a set of distributions that max...
The tendency of an amino acid to adopt certain configurations in folded proteins is treated here as ...
© 2019 Dr. Chi Kuen WongMinimum Message Length (MML) is a Bayesian framework for model selection and...
The information criterion of minimum message length (MML) provides a powerful statistical framework ...
In the field of bioinformatics, a wide range of techniques are used to computationally predict prope...
Abstract Background The aim of protein design is to predict amino-acid sequences compatible with a g...
: Statistics based inference methods like minimum message length (MML) and minimum description lengt...
Abstract—Simplified lattice models have played an important role in protein structure prediction and...
The focus of this thesis is on developing methods of integrating heterogeneous biological feature se...
Constructing an accurate model for the thermally accessible states of an Intrinsically Disordered Pr...
Abstract Background Protein structure comparison is a central issue in structural bioinformatics. Th...
Proteins are found in all living organisms and constitute a large group of macromolecules with many ...
Probabilistic graphical models (PGM) efficiently encode a probability distribution on a large set of ...
Several computer algorithms for discovering patterns in groups of protein sequences are in use that ...
We regard histogram density estimation as a model selection problem. Our approach is based on the ...
Abstract—In maximum entropy method, one chooses a distri-bution from a set of distributions that max...