HuertaNowotnyNECO.2009.2E03-08-733.pdf (1.3 MB)
Download fileFast and robust learning by reinforcement signals: explorations in the insect brain
journal contribution
posted on 2023-06-12, 06:35 authored by Ramón Huerta, Thomas NowotnyThomas NowotnyWe propose a model for pattern recognition in the insect brain. Departing from a well-known body of knowledge about the insect brain, we investigate which of the potentially present features may be useful to learn input patterns rapidly and in a stable manner. The plasticity underlying pattern recognition is situated in the insect mushroom bodies and requires an error signal to associate the stimulus with a proper response. As a proof of concept, we used our model insect brain to classify the well-known MNIST database of handwritten digits, a popular benchmark for classi?ers. We show that the structural organization of the insect brain appears to be suitable for both fast learning of new stimuli and reasonable performance in stationary conditions. Furthermore, it is extremely robust to damage to the brain structures involved in sensory processing. Finally, we suggest that spatiotemporal dynamics can improve the level of con?dence in a classi?cation decision. The proposed approach allows testing the effect of hypothesized mechanisms rather than speculating on their bene?t for system performance or con?dence in its responses.
History
Publication status
- Published
File Version
- Published version
Journal
Neural ComputationISSN
0899-7667Publisher
Massachusetts Institute of Technology PressExternal DOI
Issue
8Volume
21Page range
2123-2151Department affiliated with
- Informatics Publications
Full text available
- Yes
Peer reviewed?
- Yes