Cognitive Computing in Business
Variational inference is a technique in Bayesian statistics that approximates complex probability distributions through optimization, allowing for efficient inference and learning in probabilistic models. By transforming the problem of inference into an optimization task, variational inference seeks to find a simpler, tractable distribution that is as close as possible to the true posterior distribution, often using methods like the Kullback-Leibler divergence. This approach is particularly useful in scenarios where traditional methods of inference would be computationally prohibitive.
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