Data-driven Perception of Neuron Point Process with Unknown Unknowns
Ruochen Yang, Gaurav Gupta, Paul Bogdan

TL;DR
This paper introduces a novel statistical neuron model incorporating unknown stimuli and hidden sources, utilizing maximum likelihood estimation with fixed-point iteration for efficient inference on spike train data.
Contribution
It proposes a new framework for neuron activity analysis that accounts for unknown inputs, improving estimation accuracy and computational efficiency over existing methods.
Findings
Fixed-point iteration converges rapidly.
Model effectively captures unknown stimuli effects.
Enhanced likelihood estimation on real neural data.
Abstract
Identification of patterns from discrete data time-series for statistical inference, threat detection, social opinion dynamics, brain activity prediction has received recent momentum. In addition to the huge data size, the associated challenges are, for example, (i) missing data to construct a closed time-varying complex network, and (ii) contribution of unknown sources which are not probed. Towards this end, the current work focuses on statistical neuron system model with multi-covariates and unknown inputs. Previous research of neuron activity analysis is mainly limited with effects from the spiking history of target neuron and the interaction with other neurons in the system while ignoring the influence of unknown stimuli. We propose to use unknown unknowns, which describes the effect of unknown stimuli, undetected neuron activities and all other hidden sources of error. The maximum…
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Taxonomy
TopicsNeural dynamics and brain function · Photoreceptor and optogenetics research · stochastic dynamics and bifurcation
