2023
DOI: 10.3390/app13127055
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Interactive Guiding Sparse Auto-Encoder with Wasserstein Regularization for Efficient Classification

Abstract: In the era of big data, feature engineering has proved its efficiency and importance in dimensionality reduction and useful information extraction from original features. Feature engineering can be expressed as dimensionality reduction and is divided into two types of methods, namely, feature selection and feature extraction. Each method has its pros and cons. There are a lot of studies that combine these methods. The sparse autoencoder (SAE) is a representative deep feature learning method that combines featu… Show more

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