Difference between revisions of "Choi, ACL 2010"

From Cohen Courses
Jump to navigationJump to search
(Created page with '== Citation == Choi, Y., and C. Cardie. Hierarchical Sequential Learning for Extracting Opinions and their Attributes. ACL-2010 == Online version == [http://aclweb.org/antholo…')
 
 
(One intermediate revision by the same user not shown)
Line 9: Line 9:
 
== Summary ==
 
== Summary ==
  
This is an early and influential [[Category::paper]].... I am currently working on it....  
+
This [[Category::paper]] apply a hierarchical parameter sharing technique using Conditional Random Field (CRF) to fine grained opinion analysis. It aim to jointly identify the boundaries of opinion expression as well as to determine two of their key attributes - polarity and intensity.
  
 
== Brief description of the method ==
 
== Brief description of the method ==
  
 +
They used following features:
 +
 +
* Prior-polarity & Prior-intensity
 +
* EXP-Polarity, Exp-Intensity & EXP-Span: Expression level attributes
 +
* Per-Token Features
 +
** Common Per-Token Features
 +
** Polarity Per-Token Features
 +
** Intensity Per-Token Features
 +
* Transition Features
 +
** Polarity Transition Features
 +
** Intensity Transition Features
  
 
== Experimental Result ==
 
== Experimental Result ==
 
+
The method was evaluated on the MultiPerspective Question Answering (MPQA) corpus. Joint with Hierarchy method works best while baseline which cascade two separately trained models performs worst. The performance for negative class is much higher than positive class. It is mainly because data for negative class is double than the positive class.
 
 
 
 
== Related papers ==
 

Latest revision as of 17:26, 25 September 2011

Citation

Choi, Y., and C. Cardie. Hierarchical Sequential Learning for Extracting Opinions and their Attributes. ACL-2010

Online version

[1]

Summary

This paper apply a hierarchical parameter sharing technique using Conditional Random Field (CRF) to fine grained opinion analysis. It aim to jointly identify the boundaries of opinion expression as well as to determine two of their key attributes - polarity and intensity.

Brief description of the method

They used following features:

  • Prior-polarity & Prior-intensity
  • EXP-Polarity, Exp-Intensity & EXP-Span: Expression level attributes
  • Per-Token Features
    • Common Per-Token Features
    • Polarity Per-Token Features
    • Intensity Per-Token Features
  • Transition Features
    • Polarity Transition Features
    • Intensity Transition Features

Experimental Result

The method was evaluated on the MultiPerspective Question Answering (MPQA) corpus. Joint with Hierarchy method works best while baseline which cascade two separately trained models performs worst. The performance for negative class is much higher than positive class. It is mainly because data for negative class is double than the positive class.