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4 months ago

Relational Autoencoder for Feature Extraction

Qinxue Meng; Daniel Catchpoole; David Skillicorn; Paul J. Kennedy

Relational Autoencoder for Feature Extraction

Abstract

Feature extraction becomes increasingly important as data grows high dimensional. Autoencoder as a neural network based feature extraction method achieves great success in generating abstract features of high dimensional data. However, it fails to consider the relationships of data samples which may affect experimental results of using original and new features. In this paper, we propose a Relation Autoencoder model considering both data features and their relationships. We also extend it to work with other major autoencoder models including Sparse Autoencoder, Denoising Autoencoder and Variational Autoencoder. The proposed relational autoencoder models are evaluated on a set of benchmark datasets and the experimental results show that considering data relationships can generate more robust features which achieve lower construction loss and then lower error rate in further classification compared to the other variants of autoencoders.

Code Repositories

ser-art/RAE-vs-AE
Mentioned in GitHub
rk68657/AutoEncoders
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
skeleton-based-action-recognition-on-j-hmbdDR^2N
10%: 60.6

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Relational Autoencoder for Feature Extraction | Papers | HyperAI