Difference between revisions of "Expectation Regularization"

From Cohen Courses
Jump to navigationJump to search
 
Line 23: Line 23:
 
l(\theta; D, U)=\sum_{n}\text{log}p_{\theta}(y^{(n)}|x^{(n)}) - \lambda \triangle(\tilde{p}, \hat{p})
 
l(\theta; D, U)=\sum_{n}\text{log}p_{\theta}(y^{(n)}|x^{(n)}) - \lambda \triangle(\tilde{p}, \hat{p})
 
</math>
 
</math>
 +
 +
where <math>D</math> is the labeled data set.
  
 
Note that this is a global regularizer instead of a local one, in which case it would assign all instances to the majority of
 
Note that this is a global regularizer instead of a local one, in which case it would assign all instances to the majority of
 
the class.
 
the class.

Latest revision as of 20:28, 30 November 2010

This is a method introduced in G.S Mann and A. McCallum, ICML 2007. It is often served as a regularized term with the likelihood function. In practice human often have an insight of label prior distribution. This method introduced a way to take advantage of this prior knowledge.

Let's denote human-provided prior as and empirical label distribution as . The empirical label distribution is computed over unlabeled data set ,

We want to minimize the distance between and , denoted as . KL-distance is used here so the regularization becomes

For semi-supervised learning purposes, we can augment the objective function by adding regularization term. For example, the new conditional likelihood of data becomes

where is the labeled data set.

Note that this is a global regularizer instead of a local one, in which case it would assign all instances to the majority of the class.