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Feature Selection Techniques and its Importance in Machine Learning: A Survey

机译:特征选择技术及其在机器学习中的重要性:一项调查

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Feature selection is well studied research topic in the field of artificial intelligence, machine learning and pattern recognition. Feature selection it removes the redundant, irrelevant and noisy features from the original features of datasets by choosing the relevant features having the smaller subdivision of dataset. By applying various techniques of feature selection to the datasets, results in lower computational costs, higher classifier accuracy, reduced dimensionality and predictable model. This article investigates, feature selection techniques found in various literatures.
机译:特征选择是人工智能,机器学习和模式识别领域中经过充分研究的研究主题。特征选择通过选择数据集细分较小的相关特征,从数据集的原始特征中删除了多余,无关和嘈杂的特征。通过将各种特征选择技术应用于数据集,可降低计算成本,提高分类器准确性,降低维数和可预测模型。本文研究了各种文献中发现的特征选择技术。

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