Noise-contrastive estimation of unnormalized statistical models, with applications to natural image statistics
University of Helsinki · Helsinki Institute for Information Technology
Abstract
We consider the task of estimating, from observed data, a probabilistic model that is parameterized by a finite number of parameters. In particular, we are considering the situation where the model probability density function is unnormalized. That is, the model is only specified up to the partition function. The partition function normalizes a model so that it integrates to one for any choice of the parameters. However, it is often impossible to obtain it in closed form. Gibbs distributions, Markov and multi-layer networks are examples of models where analytical normalization is often impossible. Maximum likelihood estimation can then not be used without resorting to numerical approximations which are often…
Citation impact
- FWCI
- 26.09
- Percentile
- 100%
- References
- 29
Authors
2Topics & keywords
- Estimator
- Computer science
- Likelihood function
- Algorithm
- Mathematics
- Statistical model
- Estimation theory
- Applied mathematics
- Reduced inequalities