The identification of cis-regulatory binding sites in DNA is a difficult problem in computational biology. To obtain a full understanding of the complex machinery embodied in genetic regulatory networks it is necessary to know both the identity of the regulatory transcription factors and the location of their binding sites in the genome. We show that using an SVM together with data sampling to classify the combination of the results of individual algorithms specialised for the prediction of binding site locations, can produce significant improvements upon the original algorithms. The resulting classifier produces fewer false positive predictions and so reduces the expensive experimental procedure of verifying the predictions
<div><p>Understanding the molecular machinery involved in transcriptional regulation is central to i...
In this paper we apply machine learning to the task of predicting transcription factor binding sites...
MOTIVATION: Traditional methods to identify potential binding sites of known transcription factors s...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
The identification of cis-regulatory binding sites in DNA in multicellular eukaryotes is a particula...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
Abstract. Computational prediction of cis-regulatory binding sites is widely ac-knowledged as a diff...
It is known that much of the genetic change underlying morphological evolution takes place in cis-re...
High throughput technologies, including array-based chromatin immunoprecipitation, have rapidly incr...
Understanding the molecular machinery involved in transcriptional regulation is central to improving...
Cis-regulatory elements are the short regions of DNA to which specific regulatory proteins bind and...
<div><p>Understanding the molecular machinery involved in transcriptional regulation is central to i...
In this paper we apply machine learning to the task of predicting transcription factor binding sites...
MOTIVATION: Traditional methods to identify potential binding sites of known transcription factors s...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
Abstract. The identification of cis-regulatory binding sites in DNA is a difficult problem in comput...
The identification of cis-regulatory binding sites in DNA in multicellular eukaryotes is a particula...
The identification of cis-regulatory binding sites in DNA is a difficult problem in computational bi...
Abstract. Computational prediction of cis-regulatory binding sites is widely ac-knowledged as a diff...
It is known that much of the genetic change underlying morphological evolution takes place in cis-re...
High throughput technologies, including array-based chromatin immunoprecipitation, have rapidly incr...
Understanding the molecular machinery involved in transcriptional regulation is central to improving...
Cis-regulatory elements are the short regions of DNA to which specific regulatory proteins bind and...
<div><p>Understanding the molecular machinery involved in transcriptional regulation is central to i...
In this paper we apply machine learning to the task of predicting transcription factor binding sites...
MOTIVATION: Traditional methods to identify potential binding sites of known transcription factors s...