12150@AAAI

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#1 Deep Embedding for Determining the Number of Clusters [PDF] [Copy] [Kimi]

Authors: Yiqi Wang ; Zhan Shi ; Xifeng Guo ; Xinwang Liu ; En Zhu ; Jianping Yin

Determining the number of clusters is important but challenging, especially for data of high dimension. In this paper, we propose Deep Embedding Determination (DED), a method that can solve jointly for the unknown number of clusters and feature extraction. DED first combines the virtues of the convolutional autoencoder and the t-SNE technique to extract low dimensional embedded features. Then it determines the number of clusters using an improved density-based clustering algorithm. Our experimental evaluation on image datasets shows significant improvement over state-of-the-art methods and robustness with respect to hyperparameter settings.