Impact of learning algorithms on gene expression data set

Authors

  • DIVYA PATRA Institute of Technical Education and Research, Siksha ‘O’ Anusandhan University , Bhubaneswar.
  • SASHIKALA MISHRA Department of Computer Engineering, International Institute of Information Technology, Pune.
  • KAILASH SHAW Department of ComputerEngineering, D.Y Patil Engg. College, Akrudi, Pune.
  • KABERI DAS Institute of Technical Education and Research, Siksha ‘O’ Anusandhan University , Bhubaneswar.

Keywords:

Classification; Gene Expression Data Set; Learning Algorithms.

Abstract

Classification is a process which plays a vital role in the analysis of the gene expression data set.  The paper focuses on variety of learning algorithms which are really challenging in nature. The proposed model has been implemented and evaluated by using 5 benchmark datasets and to evaluate the performance and throughput of the model, various learning algorithms has been used like Random Forest, Support vector Machine, K-Nearest Neighbor, Bayesian, Linear Discriminate, Multi layer Perception and Decision Tree. We proposed model by using the k –fold cross validation for training and testing of the data.

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Published

2017-06-30

How to Cite

DIVYA PATRA, SASHIKALA MISHRA, KAILASH SHAW, & KABERI DAS. (2017). Impact of learning algorithms on gene expression data set. International Journal of Pharma and Bio Sciences, 8(2), 389–394. Retrieved from https://ijpbs.in/index.php/journal/article/view/5865

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Section

Research Articles

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