2022
DOI: 10.48550/arxiv.2208.03936
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Sparse Representation Learning with Modified q-VAE towards Minimal Realization of World Model

Abstract: Extraction of low-dimensional latent space from high-dimensional observation data is essential to construct a real-time robot controller with a world model on the extracted latent space. However, there is no established method for tuning the dimension size of the latent space automatically, suffering from finding the necessary and sufficient dimension size, i.e. the minimal realization of the world model. In this study, we analyze and improve Tsallis-based variational autoencoder (q-VAE), and reveal that, unde… Show more

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