作者
Esther Omolara Abiodun, Abdulatif Alabdulatif, Oludare Isaac Abiodun, Moatsum Alawida, Abdullah Alabdulatif, Rami S Alkhawaldeh
发表日期
2021/11
来源
Neural Computing and Applications
卷号
33
期号
22
页码范围
15091-15118
出版商
Springer London
简介
Specialized data preparation techniques, ranging from data cleaning, outlier detection, missing value imputation, feature selection (FS), amongst others, are procedures required to get the most out of data and, consequently, get the optimal performance of predictive models for classification tasks. FS is a vital and indispensable technique that enables the model to perform faster, eliminate noisy data, remove redundancy, reduce overfitting, improve precision and increase generalization on testing data. While conventional FS techniques have been leveraged for classification tasks in the past few decades, they fail to optimally reduce the high dimensionality of the feature space of texts, thus breeding inefficient predictive models. Emerging technologies such as the metaheuristics and hyper-heuristics optimization methods provide a new paradigm for FS due to their efficiency in improving the accuracy of classification …
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