Difference between revisions of "Xuehan Xiong's project abstract"

From Cohen Courses
Jump to navigationJump to search
(Created page with '== Team == Xuehan Xiong. [xxiong@andrew.cmu.edu] == Goal == 1. Extend sequential stacked learning to a semi-supervised base. 2. Compare this algorithm with other structural …')
 
Line 4: Line 4:
 
== Goal ==
 
== Goal ==
 
1. Extend sequential stacked learning to a semi-supervised base.
 
1. Extend sequential stacked learning to a semi-supervised base.
 +
 
2. Compare this algorithm with other structural semi-supervised algorithms.
 
2. Compare this algorithm with other structural semi-supervised algorithms.
 +
 
3. Compare this approach with the original stacking.
 
3. Compare this approach with the original stacking.
 +
 
4. Analyze the reason why it perform better or worse than supervised stacking.
 
4. Analyze the reason why it perform better or worse than supervised stacking.
  
Line 14: Line 17:
 
== Techniques ==  
 
== Techniques ==  
 
First try out some basic semi-supervised learning algorithms as the base learner of stacking,
 
First try out some basic semi-supervised learning algorithms as the base learner of stacking,
such as K.Nigam, et al. [www.kamalnigam.com/papers/emcat-mlj99.pdf]  
+
such as K.Nigam, et al. [http://www.kamalnigam.com/papers/emcat-mlj99.pdf]
  
 
     * Which data you plan to use.
 
     * Which data you plan to use.

Revision as of 22:32, 7 October 2010

Team

Xuehan Xiong. [xxiong@andrew.cmu.edu]

Goal

1. Extend sequential stacked learning to a semi-supervised base.

2. Compare this algorithm with other structural semi-supervised algorithms.

3. Compare this approach with the original stacking.

4. Analyze the reason why it perform better or worse than supervised stacking.

Experiments

Techniques

First try out some basic semi-supervised learning algorithms as the base learner of stacking, such as K.Nigam, et al. [1]

   * Which data you plan to use.
   * What you plan to do with the data, what questions you plan to answer, and if appropriate, who will be working on what aspects of the problem.
   * Why you think this is interesting - and if you published the work, what community (eg, what conference) you think the work would be most relevant to.
   * Any relevant superpowers you might have
   * How you plan to evaluate your work- and if you need to do any labeling for training and evaluation, estimate how long this will take.
   * What techniques you plan to use - and some citations for these methods. If you plan to use existing implementations, even as baselines, also describe where they are available and what evidence you have that they are stable.