Reconstruction of Hidden Representation for Robust Feature Extraction
Zeng Yu, Tianrui Li, Ning Yu, Yi Pan, Hongmei Chen, Bing Liu

TL;DR
This paper introduces Double Denoising Auto-Encoders (DDAEs), a novel model that enhances feature robustness by reconstructing both input and hidden representations, outperforming existing auto-encoder variants in noisy environments.
Contribution
The paper provides a theoretical analysis of auto-encoder properties and proposes DDAEs, a new model that improves robustness and invariance in feature learning through dual denoising.
Findings
DDAEs outperform traditional DAEs in noisy conditions.
Reconstruction of hidden representations enhances feature robustness.
The proposed training methods improve representation quality.
Abstract
This paper aims to develop a new and robust approach to feature representation. Motivated by the success of Auto-Encoders, we first theoretical summarize the general properties of all algorithms that are based on traditional Auto-Encoders: 1) The reconstruction error of the input can not be lower than a lower bound, which can be viewed as a guiding principle for reconstructing the input. Additionally, when the input is corrupted with noises, the reconstruction error of the corrupted input also can not be lower than a lower bound. 2) The reconstruction of a hidden representation achieving its ideal situation is the necessary condition for the reconstruction of the input to reach the ideal state. 3) Minimizing the Frobenius norm of the Jacobian matrix of the hidden representation has a deficiency and may result in a much worse local optimum value. We believe that minimizing the…
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