作者
Arpita Chaudhuri, Debasis Samanta, Monalisa Sarma
发表日期
2021/6/15
期刊
Expert Systems with Applications
卷号
172
页码范围
114563
出版商
Pergamon
简介
Unsupervised feature selection (UFS) is utilized in various application domains, such as data mining, pattern recognition, machine learning, etc. UFS follows three basic approaches, namely filter, wrapper, and hybrid (that is, a combination of both filter and wrapper) to select the relevant and non-redundant features. It has been observed that a filter method does not guarantee an optimal solution. However, a wrapper approach is computationally expensive. The hybrid method are known to give a better trade-off between filter and wrapper strategies. But, the practical applicability of schemes mentioned above are preferably restricted only to a numerical dataset and are not so suitable for a mixed dataset. Therefore, there is a need for a UFS scheme which can handle both the numerical and non-numerical features directly. In this paper, a robust and efficient two-phase (i.e., feature ranking (FR) and feature selection (FS …
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