Litcius/Paper detail

Autoencoder in Autoencoder Networks

Changqing Zhang, Yu Geng, Zongbo Han, Yeqing Liu, Huazhu Fu, Qinghua Hu

2022IEEE Transactions on Neural Networks and Learning Systems46 citationsDOI

Abstract

Modeling complex correlations on multiview data is still challenging, especially for high-dimensional features with possible noise. To address this issue, we propose a novel unsupervised multiview representation learning (UMRL) algorithm, termed autoencoder in autoencoder networks (AE2-Nets). The proposed framework effectively encodes information from high-dimensional heterogeneous data into a compact and informative representation with the proposed bidirectional encoding strategy. Specifically, the proposed AE2-Nets conduct encoding in two directions: the inner-AE-networks extract view-specific intrinsic information (forward encoding), while the outer-AE-networks integrate this view-specific intrinsic information from different views into a latent representation (backward encoding). For the nested architecture, we further provide a probabilistic explanation and extension from hierarchical variational autoencoder. The forward-backward strategy flexibly addresses high-dimensional (noisy) features within each view and encodes complementarity across multiple views in a unified framework. Extensive results on benchmark datasets validate the advantages compared to the state-of-the-art algorithms.

Topics & Concepts

AutoencoderEncoding (memory)Computer scienceComplementarity (molecular biology)Representation (politics)Probabilistic logicArtificial intelligenceBenchmark (surveying)Feature learningDeep learningPattern recognition (psychology)Theoretical computer scienceMachine learningBiologyLawGeodesyGeneticsPolitical sciencePoliticsGeographyHuman Pose and Action RecognitionGenerative Adversarial Networks and Image SynthesisDomain Adaptation and Few-Shot Learning