Bilateral discriminative autoencoder model orienting co-representation learning
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摘要
Autoencoder is an important representation learning model which has attracted extensive research attention. However, an autoencoder learns latent representation by reducing reconstruction error without emphasis on discrimination, which is vital to downstream machine learning tasks like classification and clustering. Many existing works have improved the discrimination of autoencoders. But as far as we know, there is no work focusing on bilateral discriminative representation learning(i.e. co-representation learning). Our work unlocks the potential of autoencoder on co-representation learning and proposes a bilateral discriminative autoencoder model for co-representation learning(CRBDAE). By utilizing a fuzzy set, the topological relationship between samples and features is represented as fuzzy information. In the bilateral discriminative autoencoder, by means of regularization, fuzzy information is employed to enhance the self-supervised co-representation learning ability. Thus, the corresponding loss function is illustrated. We also inferred the parameters updating method and proposed the model training algorithm. Finally, the availability of the CRBDAE model was demonstrated on 12 datasets and the results proved that the performance of the proposed model meets our expectations.
论文关键词:Representation learning,Autoencoder,Co-clustering,Self-supervised learning
论文评审过程:Received 10 December 2021, Revised 11 March 2022, Accepted 23 March 2022, Available online 29 March 2022, Version of Record 8 April 2022.
论文官网地址:https://doi.org/10.1016/j.knosys.2022.108653