Evaluation of Techniques for Classifying Biological Sequences*

Loading...
Thumbnail Image

View/Download File

Persistent link to this item

Statistics
View Statistics

Journal Title

Journal ISSN

Volume Title

Title

Evaluation of Techniques for Classifying Biological Sequences*

Alternative title

Published Date

2001-10-18

Publisher

Type

Report

Abstract

In recent years we have witnessed an exponential increase in the amount of biological information, either DNA or protein sequences, that has become available in public databases. This has been followed by an increased interestin developing computational techniques to automatically classify these large volumes of sequence data into variouscategories corresponding to either their role in the chromosomes, their structure, and/or their function. In this paper we evaluate some of the widely-used sequence classification algorithms and develop a framework for modeling sequences in a fashion so that traditional machine learning algorithms, such as support vector machines, can be applied easily. Our detailed experimental evaluation shows that the SVM-based approaches are able to achieve higher classification accuracy compared to the more traditional sequence classification algorithms such as Markov model based techniques and K-nearest neighbor based approaches.

Keywords

Description

Related to

Replaces

License

Series/Report Number

Technical Report; 01-033

Funding information

Isbn identifier

Doi identifier

Previously Published Citation

Other identifiers

Suggested citation

Deshpande, Mukund; Karypis, George. (2001). Evaluation of Techniques for Classifying Biological Sequences*. Retrieved from the University Digital Conservancy, https://hdl.handle.net/11299/215482.

Content distributed via the University Digital Conservancy may be subject to additional license and use restrictions applied by the depositor. By using these files, users agree to the Terms of Use. Materials in the UDC may contain content that is disturbing and/or harmful. For more information, please see our statement on harmful content in digital repositories.