Variational Inference via \chi Upper Bound Minimization
–Neural Information Processing Systems
Variational inference (VI) is widely used as an efficient alternative to Markov chain Monte Carlo. It posits a family of approximating distributions $q$ and finds the closest member to the exact posterior $p$. Closeness is usually measured via a divergence $D(q || p)$ from $q$ to $p$. While successful, this approach also has problems. Notably, it typically leads to underestimation of the posterior variance.
Neural Information Processing Systems
Mar-17-2026, 13:31:29 GMT
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