Publication | Open Access
Beyond GLMs: A Generative Mixture Modeling Approach to Neural System Identification
54
Citations
31
References
2013
Year
EngineeringMachine LearningGaussian MixturesLinear ModelsSocial SciencesMixture Of ExpertData ScienceMixture AnalysisGenerative ModelIndependent Component AnalysisStatisticsGeneralized LinearGenerative MixtureNeuroinformaticsNeural System IdentificationNeuroimagingFunctional Data AnalysisMixture DistributionComputational NeuroscienceStatistical InferenceNeuroscienceBrain Modeling
Generalized linear models (GLMs) represent a popular choice for the probabilistic characterization of neural spike responses. While GLMs are attractive for their computational tractability, they also impose strong assumptions and thus only allow for a limited range of stimulus-response relationships to be discovered. Alternative approaches exist that make only very weak assumptions but scale poorly to high-dimensional stimulus spaces. Here we seek an approach which can gracefully interpolate between the two extremes. We extend two frequently used special cases of the GLM-a linear and a quadratic model-by assuming that the spike-triggered and non-spike-triggered distributions can be adequately represented using Gaussian mixtures. Because we derive the model from a generative perspective, its components are easy to interpret as they correspond to, for example, the spike-triggered distribution and the interspike interval distribution. The model is able to capture complex dependencies on high-dimensional stimuli with far fewer parameters than other approaches such as histogram-based methods. The added flexibility comes at the cost of a non-concave log-likelihood. We show that in practice this does not have to be an issue and the mixture-based model is able to outperform generalized linear and quadratic models.
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