We describe a class of models that predict how the instantaneous firing rate of a neuron depends on a dynamic stimulus. The models utilize a learnt pointwise nonlinear transform of the stimulus, followed by a linear filter that acts on the sequence of transformed inputs. In one case, the nonlinear transform is the same at all filter lag-times. Thus, this “input nonlinearity” converts the initial numerical representation of stimulus value to a new representation that provides optimal input to the subsequent linear model. We describe algorithms that estimate both the input nonlinearity and the linear weights simultaneously; and present techniques to regularise and quantify uncertainty in the estimates. In a second approach, the model is generalized to allow a different nonlinear transform of the stimulus value at each lag-time. Although more general, this model is algorithmically more straightforward to fit. However, it has many more degrees of freedom than the first approach, thus requiring more data for accurate estimation. We test the feasibility of these methods on synthetic data, and on responses from a neuron in rodent barrel cortex. The models are shown to predict responses to novel data accurately, and to recover several important neuronal response properties.
Inferring input nonlinearities in neural encoding models
2008, Vol. 19, No. 1
,
Pages 35-67
(doi:10.1080/09548980701813936)
Misha B. Ahrens1, Liam Paninski2 and Maneesh Sahani1†
1Gatsby Computational Neuroscience Unit, University College London, London, UK
2Department of Statistics and Center for Theoretical Neuroscience, Columbia University, New YorkUSA








