Cascade Support Vector Machines applied to the Translation Initiation Site prediction problem

Authors

  • Wallison W. Guimarães Pontifical Catholic University of Minas Gerais
  • Cristiano L. N. Pinto School of Engineering of Minas Gerais
  • Cristiane N. Nobre Pontifical Catholic University of Minas Gerais
  • Luis E. Zárate Pontifical Catholic University of Minas Gerais

DOI:

https://doi.org/10.5753/jidm.2018.2052

Keywords:

Translation Initiation Site, Cascade SVM, Data Mining, Machine Learning

Abstract

The correct identification of the protein coding region is an important and latent problem of biology. The challenge is the lack of deep knowledge about biological systems, specifically the conservative characteristics of the messenger Ribonucleic Acid (mRNA). Thus, the use of computational methods is fundamental to discovery patterns within the Translation Initiation Site (TIS). In Bioinformatics, machine learning algorithms have been widely applied, among them we have the Support Vector Machines (SVM), which are based on inductive inference. However, the use of SVM incurs a high computational cost when applied to large data sets, and its training time scales up to quadratically in relation to the data set size. In this study, to tackle this challenge and analyse the algorithm’s behavior, we employed a Cascade SVM approach to the TIS prediction problem. This strategy proposes accelerating the model training process and reducing the number of support vectors. The results achieved in our study showed that the cascaded SVM approach is able to significantly reduce model training times while maintaining accuracy and F-measure rates similar to the conventional approach (SVM). We also demonstrate the scenarios in which the cascade approach is more suitable for reducing training time.

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Published

2018-10-01

How to Cite

W. Guimarães, W., L. N. Pinto, C., N. Nobre, C., & E. Zárate, L. (2018). Cascade Support Vector Machines applied to the Translation Initiation Site prediction problem. Journal of Information and Data Management, 9(2), 179. https://doi.org/10.5753/jidm.2018.2052

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Section

KDMILE 2017