Reconciling Predictive Coding and Biased Competition Models of Cortical Function
Open Access
- 1 January 2008
- journal article
- research article
- Published by Frontiers Media SA in Frontiers in Computational Neuroscience
- Vol. 2, 300
- https://doi.org/10.3389/neuro.10.004.2008
Abstract
A simple variation of the standard biased competition model is shown, via some trivial mathematical manipulations, to be identical to predictive coding. Specifically, it is shown that a particular implementation of the biased competition model, in which nodes compete via inhibition that targets the inputs to a cortical region, is mathematically equivalent to the linear predictive coding model. This observation demonstrates that these two important and influential rival theories of cortical function are minor variations on the same underlying mathematical model.Keywords
This publication has 52 references indexed in Scilit:
- Unsupervised Learning of Overlapping Image Components Using Divisive Input ModulationComputational Intelligence and Neuroscience, 2009
- Extra-classical receptive field effects measured in striate cortex with fMRINeuroImage, 2006
- Learning receptive fields using predictive feedbackJournal of Physiology-Paris, 2006
- The Role of Feedback in Shaping the Extra-Classical Receptive Field of Cortical Neurons: A Recurrent Network ModelJournal of Neuroscience, 2006
- Temporal dynamics of 2D and 3D shape representation in macaque visual area V4Visual Neuroscience, 2006
- CORTICAL ALGORITHMS FOR PERCEPTUAL GROUPINGAnnual Review of Neuroscience, 2006
- How Close Are We to Understanding V1?Neural Computation, 2005
- Top-down Dendritic Input Increases the Gain of Layer 5 Pyramidal NeuronsCerebral Cortex, 2004
- A Feedback Model of Visual AttentionJournal of Cognitive Neuroscience, 2004
- Development of low entropy coding in a recurrent networkNetwork: Computation in Neural Systems, 1996