Modeling Local Field Potentials with Recurrent Neural Networks
نویسندگان
چکیده
18 We present a Recurrent Neural Network using LSTM (Long Short Term 19 Memory) units that is capable of modeling Local Field Potentials. We train 20 and test the network on real data recorded from patients. We construct 21 networks that are capable of modeling LFPs in single and multiple channels, 22 and can also model LFP dynamics after stimulation. 23 24
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