Poster
Affine Independent Variational Inference
Edward Challis · David Barber
Harrah’s Special Events Center 2nd Floor
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Abstract
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Abstract:
We present a method for approximate inference for a broad class of non-conjugate probabilistic models. In particular, for the family of generalized linear model target densities we describe a rich class of variational approximating densities which can be best fit to the target by minimizing the Kullback-Leibler divergence. Our approach is based on using the Fourier representation which we show results in efficient and scalable inference.
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