Difference between revisions of "Comparing Unsupervised Learning of Narrative Event Chains and Mining the web for fine-grained semantic verb relations"

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Goal of first paper was to extract narrative event chains using unsupervised methods [[AddressesProblem::extract narrative event chains using unsupervised methods]] . Whereas, goal of second paper is to find the relation between verbs [[AddressesProblem::find the relation between verbs]]. Relations considered in second paper are similarity, strength, antonymy, enablement, and temporal relations.
 
Goal of first paper was to extract narrative event chains using unsupervised methods [[AddressesProblem::extract narrative event chains using unsupervised methods]] . Whereas, goal of second paper is to find the relation between verbs [[AddressesProblem::find the relation between verbs]]. Relations considered in second paper are similarity, strength, antonymy, enablement, and temporal relations.
  
Paper 2 uses approach motivated by mutual information to compute strength of association/relation between verb pairs and surface pattern. Paper 1 uses mutual information motivated approach to induce narrative events. It uses [[UsesMethod: Support Vector Machines]] for temporal ordering of connected events.
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Paper 2 uses approach motivated by mutual information to compute strength of association/relation between verb pairs and surface pattern. Paper 1 uses mutual information motivated approach to induce narrative events. It uses [[UsesMethod: Support_Vector_Machines]] for temporal ordering of connected events.
  
 
Paper 1 uses a [[UsesDataset::Gigaword corpus]]. Whereas, in Paper 2 Google is used to find number of hits for relation verb pair <math> V1,V2 </math> and surface pattern <math> P </math> from WWW[[UsesDataset::WWW].
 
Paper 1 uses a [[UsesDataset::Gigaword corpus]]. Whereas, in Paper 2 Google is used to find number of hits for relation verb pair <math> V1,V2 </math> and surface pattern <math> P </math> from WWW[[UsesDataset::WWW].

Revision as of 05:29, 6 November 2012

Papers

1. Unsupervised Learning of Narrative Event Chains, by N. Chambers, D. Jurafsky. [1]

2. VerbOcean:Mining the Web for Fine-Grained Semantic Verb Relations, by T. Chklovski, P. Pantel. [2]

Problem, method and dataset

Goal of first paper was to extract narrative event chains using unsupervised methods extract narrative event chains using unsupervised methods . Whereas, goal of second paper is to find the relation between verbs find the relation between verbs. Relations considered in second paper are similarity, strength, antonymy, enablement, and temporal relations.

Paper 2 uses approach motivated by mutual information to compute strength of association/relation between verb pairs and surface pattern. Paper 1 uses mutual information motivated approach to induce narrative events. It uses UsesMethod: Support_Vector_Machines for temporal ordering of connected events.

Paper 1 uses a Gigaword corpus. Whereas, in Paper 2 Google is used to find number of hits for relation verb pair and surface pattern from WWW[[UsesDataset::WWW].


Additional Questions

1. How much time did you spend reading the (new, non-wikified) paper you summarized? 2 hour

2. How much time did you spend reading the old wikified paper? 1 hours

3. How much time did you spend reading the summary of the old paper? 10 minutes

4. How much time did you spend reading background materiel?

5. Was there a study plan for the old paper?