Summary of Towards An Algebraic Framework For Approximating Functions Using Neural Network Polynomials, by Shakil Rafi et al.
Towards an Algebraic Framework For Approximating Functions Using Neural Network Polynomialsby Shakil Rafi, Joshua Lee…
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