Latent Variable Models for Hippocampal Sequence Analysis
نویسندگان
چکیده
VIRTUAL TUNING CURVES we only train the HMMs on spikes from PBEs; to determine if the inferred states encode position data, we compute virtual tuning curves in two ways: (A) by decoding RUN data using the PBE-only HMM, and then using the true position data to estimate a map from states to position, and (B) by using the Bayesian decoder to estimate position during PBEs, and to learn a map from the PBE-only HMM states to these estimated positions Results II: sequence detection using HMM
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تاریخ انتشار 2017