1. Extracting deep bottleneck features using stacked auto-encoders;Gehring,2013
2. Towards k-means-friendly spaces: simultaneous deep learning and clustering;Yang,2017
3. Deep k-means: jointly clustering with k-means and learning representations;Fard;Pattern Recognit. Lett.,2020
4. Deep clustering with convolutional autoencoders;Guo,2017
5. Deep embedding clustering based on contractive autoencoder;Diallo;Neurocomputing,2021