www.cs.iastate.edu/~honavar/aigroup.html This paper describes an approach to data-driven discovery of decision trees or rules for assigning protein sequences to functional families using sequence motifs. This method is able to capture regularities that can be described in terms of presence or absence of arbitrary combinations of motifs. A training set of peptidase sequences labeled with the corresponding MEROPS functional families or clans is used to automatically construct decision trees that capture regularities that are sufficient to assign the sequences to their respective functional families. The performance of the resulting decision tree classifiers is then evaluated on an independent test set. We compared the rules constructed using ...
Sequence motif discovery algorithms are an important part of the computational biologists toolkit. T...
Predicting the function of a protein from its sequence is typically addressed using sequence-similar...
Generating motifs from known active sites and matching those motifs to an uncharacterized protein is...
This thesis describes an approach to data-driven discovery of decision trees or rules for assigning ...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
Summary. Protein function prediction, i.e. classification of protein sequences according to their bi...
We describe a method for discovering active motifs in a set of related protein sequences. The method...
Discrete motifs that discriminate functional classes of proteins are useful for classifying new sequ...
Proteins can be grouped into families according to their biological functions. This paper presents a...
We introduce an unsupervised method for extracting meaningful motifs from biological sequence data. ...
To classify proteins into functional families based on their primary sequences, existing classificat...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
We present a system for multi-class protein classification based on neural networks. The basic issue...
A number of protein sequences are found and added to the database but its functional properties are ...
This paper proposes a hybrid algorithm that combines characteristics of both Genetic Programming (GP...
Sequence motif discovery algorithms are an important part of the computational biologists toolkit. T...
Predicting the function of a protein from its sequence is typically addressed using sequence-similar...
Generating motifs from known active sites and matching those motifs to an uncharacterized protein is...
This thesis describes an approach to data-driven discovery of decision trees or rules for assigning ...
We use methods from Data Mining and Knowledge Discovery to design an algorithm for detecting motifs ...
Summary. Protein function prediction, i.e. classification of protein sequences according to their bi...
We describe a method for discovering active motifs in a set of related protein sequences. The method...
Discrete motifs that discriminate functional classes of proteins are useful for classifying new sequ...
Proteins can be grouped into families according to their biological functions. This paper presents a...
We introduce an unsupervised method for extracting meaningful motifs from biological sequence data. ...
To classify proteins into functional families based on their primary sequences, existing classificat...
We use methods from data mining and knowledge discovery to design an algorithm for detecting motifs ...
We present a system for multi-class protein classification based on neural networks. The basic issue...
A number of protein sequences are found and added to the database but its functional properties are ...
This paper proposes a hybrid algorithm that combines characteristics of both Genetic Programming (GP...
Sequence motif discovery algorithms are an important part of the computational biologists toolkit. T...
Predicting the function of a protein from its sequence is typically addressed using sequence-similar...
Generating motifs from known active sites and matching those motifs to an uncharacterized protein is...