Difference between revisions of "Posterior Regularization for Expectation Maximization"

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<math>
 
<math>
q^{t+1} = argmax_{q} F(q,\theta^t) = argmax_{q} -D_{KL}(q||p_{\theta^t}(z|x))
+
q^{t+1} = argmax_{q} F(q,\theta^t) = argmax_{q} [-D_{KL}(q||p_{\theta^t}(z|x))]
 
</math>
 
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Revision as of 18:18, 29 September 2011

Summary

This is a method to impose contraints on posteriors in the Expectation Maximization algorithm, allowing a finer-level control over these posteriors.

Method Description

For a given set x of observed data, a set of latent data z and a set of parameters , the Expectation Maximization algorithm can be viewed as the alternation between two maximization steps. Where the E-step is defined as: