NICE: Non-linear Independent Components Estimation
Université de Montréal · Polytechnique Montréal
Abstract
We propose a deep learning framework for modeling complex high-dimensional densities called Non-linear Independent Component Estimation (NICE). It is based on the idea that a good representation is one in which the data has a distribution that is easy to model. For this purpose, a non-linear deterministic transformation of the data is learned that maps it to a latent space so as to make the transformed data conform to a factorized distribution, i.e., resulting in independent latent variables. We parametrize this transformation so that computing the Jacobian determinant and inverse transform is trivial, yet we maintain the ability to learn complex non-linear transformations, via a composition of simple building…
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Authors
3Topics & keywords
- Inpainting
- Transformation (genetics)
- Latent variable
- Computer science
- Representation (politics)
- Component (thermodynamics)
- Jacobian matrix and determinant
- Linear map