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q-VAE for Disentangled Representation Learning and Latent Dynamical Systems

Taisuke Kobayashis

2020IEEE Robotics and Automation Letters18 citationsDOIOpen Access PDF

Abstract

A variational autoencoder (VAE) derived from Tsallis statistics called q-VAE is proposed. In the proposed method, a standard VAE is employed to statistically extract latent space hidden in sampled data, and this latent space helps make robots controllable in feasible computational time and cost. To improve the usefulness of the latent space, this letter focuses on disentangled representation learning, e.g., β-VAE, which is the baseline for it. Starting from a Tsallis statistics perspective, a new lower bound for the proposed q-VAE is derived to maximize the likelihood of the sampled data, which can be considered an adaptive β-VAE with deformed Kullback-Leibler divergence. To verify the benefits of the proposed q-VAE, a benchmark task to extract the latent space from the MNIST dataset was performed. The results demonstrate that the proposed q-VAE improved disentangled representation while maintaining the reconstruction accuracy of the data. In addition, it relaxes the independency condition between data, which is demonstrated by learning the latent dynamics of nonlinear dynamical systems. By combining disentangled representation, the proposed q-VAE achieves stable and accurate long-term state prediction from the initial state and the action sequence.

Topics & Concepts

MNIST databaseRepresentation (politics)AutoencoderArtificial intelligenceBenchmark (surveying)Computer scienceSpace (punctuation)State spaceMachine learningMathematicsTask (project management)Feature learningAlgorithmNonlinear systemLatent variablePattern recognition (psychology)Action (physics)State (computer science)Dynamical systems theoryState-space representationBlack boxSampling (signal processing)Parameter spaceGenerative Adversarial Networks and Image SynthesisModel Reduction and Neural NetworksAdversarial Robustness in Machine Learning
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