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Neural Encoding Models

A set of python modules for fitting, testing, and visualizing parameters of neural encoding models (NEMs).

Neural encoding models are models that try and predict neural activity given a stimulus. For example, we can fit models to predict the spiking activity of neurons in the retina or V1 in response to a visual stimulus displayed on a computer monitor.

We include general tools that allow you to fit the parameters of encoding models of any functional form. Additionally, we provide specific classes to fit linear-nonlinear (LN) and cascaded (2-layer) linear-nonlinear (LN-LN) models to data.

Used in the paper: Inferring hidden structure in multilayered neural circuits.

Installation

git clone git@github.com:ganguli-lab/nems.git
cd nems
pip install -r requirements.txt
python setup.py install

Requirements

Numpy, scipy, pandas and the proxalgs package.

Development

Pull requests welcome! Please stick to the NumPy/SciPy documentation standards We use sphinx for documentation and nose for testing.