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Efficient neural decoding of self-location with a deep recurrent network

Fig 1

Accurate decoding of position with a RNN.

Location decoding errors based on CA1 neural data recorded from 1m square open field environment as a function of time window size. (a) shows mean error and (b) median error. Blue lines represent errors from the RNN decoder and red lines from Bayesian approaches. Results for the RNN approach are averaged over different independent realizations of the training algorithm. Black dots depict the mean/median error of each individual model. Results shown are for animal R2192.

Fig 1

doi: https://doi.org/10.1371/journal.pcbi.1006822.g001