Study on Applicability of Curriculum Framework to Feature Selection Algorithms

Deepthi Kalavala, C. Bhagvati
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Abstract

The present work demonstrates the applicability of consistency based and entropy based feature selection metrics to curriculum framework. Feature selection aims at reducing the dimensionality of datasets and is a preprocessing step for classification and clustering. In general, feature selection algorithms make use of the entire training set for identifying important features. Curriculum based feature selection uses instances in the order of their complexity in an incremental paradigm. Curriculum framework deals with easy and then difficult instances in a guided environment. Curriculum methods are advantageous over no-curriculum methods in two ways. Firstly, the time consumed by curriculum methods is very less; secondly, curriculum methods allow the feature selection methods to be applied in incremental paradigm. Incremental nature of curriculum methods allows feature selection to work upon newly added samples in less time. In this paper, curriculum methods are compared with no-curriculum methods using performance indices - classification accuracy, time and selection ratio. Experimental results on various datasets show (varying degrees of) superiority of using curriculum framework in feature selection.
课程框架对特征选择算法的适用性研究
本研究证明了基于一致性和基于熵的特征选择指标在课程框架中的适用性。特征选择旨在降低数据集的维数,是分类和聚类的预处理步骤。一般来说,特征选择算法利用整个训练集来识别重要的特征。基于课程的特征选择在增量范式中按其复杂性顺序使用实例。课程框架在引导环境中处理简单和困难的实例。课程方法相对于非课程方法有两方面的优势。首先,课程方法所耗费的时间很少;其次,课程方法允许特征选择方法在增量范式中应用。课程方法的增量性质允许在更短的时间内对新添加的样本进行特征选择。本文将课程方法与非课程方法从分类准确率、时间和选择率等性能指标进行了比较。在不同数据集上的实验结果显示,课程框架在特征选择上具有不同程度的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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