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arxiv: 1902.02113 · v1 · submitted 2019-02-06 · 💻 cs.LG · cs.AI· cs.CL· stat.ML

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Latent Space Cartography: Generalised Metric-Inspired Measures and Measure-Based Transformations for Generative Models

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classification 💻 cs.LG cs.AIcs.CLstat.ML
keywords latentdataspacesgenerativemodelsspacecartographydimensional
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Deep generative models are universal tools for learning data distributions on high dimensional data spaces via a mapping to lower dimensional latent spaces. We provide a study of latent space geometries and extend and build upon previous results on Riemannian metrics. We show how a class of heuristic measures gives more flexibility in finding meaningful, problem-specific distances, and how it can be applied to diverse generator types such as autoregressive generators commonly used in e.g. language and other sequence modeling. We further demonstrate how a diffusion-inspired transformation previously studied in cartography can be used to smooth out latent spaces, stretching them according to a chosen measure. In addition to providing more meaningful distances directly in latent space, this also provides a unique tool for novel kinds of data visualizations. We believe that the proposed methods can be a valuable tool for studying the structure of latent spaces and learned data distributions of generative models.

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