Hierarchical Models in the Brain
Wellcome Centre for Human Neuroimaging · University College London
Abstract
This paper describes a general model that subsumes many parametric models for continuous data. The model comprises hidden layers of state-space or dynamic causal models, arranged so that the output of one provides input to another. The ensuing hierarchy furnishes a model for many types of data, of arbitrary complexity. Special cases range from the general linear model for static data to generalised convolution models, with system noise, for nonlinear time-series analysis. Crucially, all of these models can be inverted using exactly the same scheme, namely, dynamic expectation maximization. This means that a single model and optimisation scheme can be used to invert a wide range of models. We present the model…
Citation impact
- FWCI
- 9.15
- Percentile
- 100%
- References
- 102
Authors
1Topics & keywords
- Computer science
- Inference
- Parametric model
- Generative model
- Algorithm
- Artificial intelligence
- Nonlinear system
- Parametric statistics