An efficient technique for protein classification using feature extraction by artificial neural networks

Swati Vipsita, B. K. Shee, S. K. Rath
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引用次数: 23

Abstract

Classification, or supervised learning, is one of the major data mining processes. Protein classification focuses on predicting the function or the structure of new proteins. This can be done by classifying a new protein to a given family with previously known characteristics. There are many approaches available for classification tasks, such as statistical techniques, decision trees and the neural networks. In this paper, three types of neural networks such as feedforward neural network, probabilistic neural network and radial basis function neural network are implemented. The main objective of the paper is to build up an efficient classifier using neural networks. The measures used to estimate the performance of the classifier are Precision, Sensitivity and Specificity.
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一种基于人工神经网络特征提取的蛋白质分类方法
分类或监督学习是主要的数据挖掘过程之一。蛋白质分类的重点是预测新蛋白质的功能或结构。这可以通过将新蛋白质分类到具有已知特征的特定家族来完成。有许多方法可用于分类任务,如统计技术,决策树和神经网络。本文实现了三种类型的神经网络:前馈神经网络、概率神经网络和径向基函数神经网络。本文的主要目的是利用神经网络建立一个高效的分类器。用于估计分类器性能的措施是精度,灵敏度和特异性。
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