Spectral methods for neural characterization using generalized quadratic models Il Memming Park 123, Evan Archer 13, & Jonathan W. Pillow
–Neural Information Processing Systems
We describe a set of fast, tractable methods for characterizing neural responses to high-dimensional sensory stimuli using a model we refer to as the generalized quadratic model (GQM). The GQM consists of a low-rank quadratic function followed by a point nonlinearity and exponential-family noise. The quadratic function characterizes the neuron's stimulus selectivity in terms of a set linear receptive fields followed by a quadratic combination rule, and the invertible nonlinearity maps this output to the desired response range.
Neural Information Processing Systems
Mar-13-2024, 19:22:37 GMT
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