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LFADS - Latent Factor Analysis via Dynamical Systems

About

Neuroscience is experiencing a data revolution in which many hundreds or thousands of neurons are recorded simultaneously. Currently, there is little consensus on how such data should be analyzed. Here we introduce LFADS (Latent Factor Analysis via Dynamical Systems), a method to infer latent dynamics from simultaneously recorded, single-trial, high-dimensional neural spiking data. LFADS is a sequential model based on a variational auto-encoder. By making a dynamical systems hypothesis regarding the generation of the observed data, LFADS reduces observed spiking to a set of low-dimensional temporal factors, per-trial initial conditions, and inferred inputs. We compare LFADS to existing methods on synthetic data and show that it significantly out-performs them in inferring neural firing rates and latent dynamics.

David Sussillo, Rafal Jozefowicz, L. F. Abbott, Chethan Pandarinath• 2016

Related benchmarks

TaskDatasetResultRank
ClassificationSynthetic Dynamical Systems Lorenz, Thomas, and Hindmarsh-Rose (test)
Accuracy99.06
40
ClassificationHAR (1% labels)
Accuracy78.54
19
ClassificationEEG (1% labels)
Accuracy71.8
19
ClassificationHAR 5% labels
Accuracy91.48
19
ClassificationEEG (5% labels)
Accuracy75.19
19
ClassificationECG (1% labels)
Accuracy66.3
19
ClassificationPPG (1% labels)
Accuracy40.22
19
ClassificationPPG (5% labels)
Accuracy45.35
19
ClassificationECG (5% labels)
Accuracy64.79
19
Time-series classificationEpilepsy (test)
Accuracy94.71
13
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