Demixing odors - fast inference in olfaction
Grabska-Barwinska, Agnieszka, Beck, Jeff, Pouget, Alexandre, Latham, Peter
–Neural Information Processing Systems
The olfactory system faces a difficult inference problem: it has to determine what odors are present based on the distributed activation of its receptor neurons. Here we derive neural implementations of two approximate inference algorithms that could be used by the brain. One is a variational algorithm (which builds on the work of Beck. Importantly, we use a more realistic prior distribution over odors than has been used in the past: we use a spike and slab'' prior, for which most odors have zero concentration. After mapping the two algorithms onto neural dynamics, we find that both can infer correct odors in less than 100 ms, although it takes 500 ms to eliminate false positives. Thus, at the behavioral level, the two algorithms make very similar predictions.
Neural Information Processing Systems
Feb-14-2020, 17:57:11 GMT
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