Difference between revisions of "Gimpel and Smith, NAACL 2010"

From Cohen Courses
Jump to navigationJump to search
Line 11: Line 11:
 
==Brief Description of the Softmax-Margin objective function==
 
==Brief Description of the Softmax-Margin objective function==
  
 +
CLL: <math>\min_\theta \sum_{i=1}^n -\boldsymbol{\theta}^T\boldsymbol{f}(x^{(i)},y^{(i)}) + \log \sum_{y \in \mathcal{Y}(x^{(i)})} \exp \{ \boldsymbol{\theta}^T \boldsymbol{f}(x^{(i)},y) \}</math>
 +
 +
Max-margin: <math>\min_\theta \sum_{i=1}^n -\boldsymbol{\theta}^T\boldsymbol{f}(x^{(i)},y^{(i)}) + \max_{y \in \mathcal{Y}(x^{(i)})} (\boldsymbol{\theta}^T \boldsymbol{f}(x^{(i)},y) + cost(y^{(i)}, y))</math>
  
 
==Experimental Results==
 
==Experimental Results==
  
 
==Related Work==
 
==Related Work==

Revision as of 18:42, 25 September 2011

Softmax-Margin CRFs: Training Log-Linear Models with Cost Functions

Online: [1]

Citation

Kevin Gimpel and Noah A. Smith. Softmax-margin CRFs: Training log-linear models with loss functions. In Proceedings of the Human Language Technologies Conference of the North American Chapter of the Association for Computational Linguistics, pages 733-736, Los Angeles, California, USA, June 2010.

Summary

The authors want to be able to incorporate a cost function (present in structured SVMs) into standard conditional log-likelihood models. They introduce the softmax-margin objective function that achieves the best of both worlds. Using a NER task, it performs significantly better than a standard conditional loglikelihood model, a max-margin model, and the perceptron, but is indistinguishable from MIRA, risk, and JRB (Jensen risk bound; defined in the paper).

Brief Description of the Softmax-Margin objective function

CLL:

Max-margin:

Experimental Results

Related Work