Named Entity Recognition through Classifier Combination
Radu Florian, Abe Ittycheriah, et al.
CoNLL 2003
We study how closely the optimal Bayes error rate can be approximately reached using a classification algorithm that computes a classifier by minimizing a convex upper bound of the classification error function. The measurement of closeness is characterized by the loss function used in the estimation. We show that such a classification scheme can be generally regarded as a (nonmaximum-likelihood) conditional in-class probability estimate, and we use this analysis to compare various convex loss functions that have appeared in the literature. Furthermore, the theoretical insight allows us to design good loss functions with desirable properties. Another aspect of our analysis is to demonstrate the consistency of certain classification methods using convex risk minimization. This study sheds light on the good performance of some recently proposed linear classification methods including boosting and support vector machines. It also shows their limitations and suggests possible improvements. © Institute of Mathematical Statistics, 2004.
Radu Florian, Abe Ittycheriah, et al.
CoNLL 2003
Jane Cullum, Albert Ruehli, et al.
IEEE Transactions on Circuits and Systems II: Analog and Digital Signal Processing
Tong Zhang, Frank J. Oles
Information Retrieval
Rie Kubota Ando, Tong Zhang
JMLR