Semi-supervised learning of statistical models for natural language understanding


Autoria(s): Zhou, Deyu; He, Yulan
Data(s)

20/07/2014

Resumo

Natural language understanding is to specify a computational model that maps sentences to their semantic mean representation. In this paper, we propose a novel framework to train the statistical models without using expensive fully annotated data. In particular, the input of our framework is a set of sentences labeled with abstract semantic annotations. These annotations encode the underlying embedded semantic structural relations without explicit word/semantic tag alignment. The proposed framework can automatically induce derivation rules that map sentences to their semantic meaning representations. The learning framework is applied on two statistical models, the conditional random fields (CRFs) and the hidden Markov support vector machines (HM-SVMs). Our experimental results on the DARPA communicator data show that both CRFs and HM-SVMs outperform the baseline approach, previously proposed hidden vector state (HVS) model which is also trained on abstract semantic annotations. In addition, the proposed framework shows superior performance than two other baseline approaches, a hybrid framework combining HVS and HM-SVMs and discriminative training of HVS, with a relative error reduction rate of about 25% and 15% being achieved in F-measure.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/26096/1/Semi_supervised_learning_of_statistical_models_for_natural_language_understanding.pdf

Zhou, Deyu and He, Yulan (2014). Semi-supervised learning of statistical models for natural language understanding. Scientific world journal, 2014 ,

Relação

http://eprints.aston.ac.uk/26096/

Tipo

Article

PeerReviewed