Recognizing recurrent neural networks (rRNN): Bayesian inference for recurrent neural networks
Research output: Contribution to journal › Research article › Contributed › peer-review
Contributors
Abstract
Abstract Recurrent neural networks (RNNs) are widely used in computational neuroscience and machine learning applications. In an RNN, each neuron computes its output as a nonlinear function of its integrated input.While the importance of RNNs, especially as models of brain processing, is undisputed, it is also widely acknowledged that the computations in standard RNN models may be an over-simplification of what real neuronal networks compute. Here, we suggest that the RNN approach may be made computationally more powerful by its fusion with Bayesian inference techniques for nonlinear dynamical systems. In this scheme, we use anRNN as a generative model of dynamic input caused by the environment, e.g. of speech or kinematics. Given this generative RNN model, we derive Bayesian update equations that can decode its output.Critically, these updates define a 'recognizing RNN' (rRNN), in which neurons compute and exchange prediction and prediction errormessages. The rRNN has several desirable features that a conventional RNN does not have, e.g. fast decoding of dynamic stimuli and robustness to initial conditions and noise. Furthermore, it implements a predictive coding scheme for dynamic inputs. We suggest that the Bayesian inversion of RNNs may be useful both as a model of brain function and as a machine learning tool. We illustrate the use of the rRNN by an application to the online decoding (i.e. recognition) of human kinematics.
Details
Original language | English |
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Pages (from-to) | 201-217 |
Number of pages | 17 |
Journal | Biological cybernetics : advances in computational neuroscience |
Volume | 106 |
Issue number | 4-5 |
Publication status | Published - Jul 2012 |
Peer-reviewed | Yes |
Externally published | Yes |
External IDs
PubMed | 22581026 |
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Keywords
ASJC Scopus subject areas
Keywords
- Bayesian inference, Human motion, Nonlinear dynamics, Recurrent neural networks