Title
Latent structure perceptron with feature induction for unrestricted coreference resolution
Abstract
We describe a machine learning system based on large margin structure perceptron for unrestricted coreference resolution that introduces two key modeling techniques: latent coreference trees and entropy guided feature induction. The proposed latent tree modeling turns the learning problem computationally feasible. Additionally, using an automatic feature induction method, we are able to efficiently build nonlinear models and, hence, achieve high performances with a linear learning algorithm. Our system is evaluated on the CoNLL-2012 Shared Task closed track, which comprises three languages: Arabic, Chinese and English. We apply the same system to all languages, except for minor adaptations on some language dependent features, like static lists of pronouns. Our system achieves an official score of 58.69, the best one among all the competitors.
Year
Venue
Keywords
2012
EMNLP-CoNLL Shared Task
automatic feature induction method,high performance,proposed latent tree modeling,unrestricted coreference resolution,linear learning algorithm,feature induction,latent structure perceptron,latent coreference tree,language dependent feature,key modeling technique,conll-2012 shared task
Field
DocType
Citations 
Coreference,Nonlinear system,Arabic,Computer science,Artificial intelligence,Natural language processing,Tree modeling,Perceptron,Machine learning
Conference
41
PageRank 
References 
Authors
1.23
11
3
Name
Order
Citations
PageRank
Eraldo R. Fernandes1766.09
Cícero Nogueira dos Santos277137.83
Ruy Luiz Milidiú319220.18