In this paper, we propose a self-representative feature extraction deep neural network for unsupervised subspace clustering to improve representativeness and clustering ability. The extensive relevant results on various data demonstrate that deep subspace clustering employing self-representative features from high-dimensional data can effectively reduce the dimension of the self-representative layer while improv- ing performance.