In this paper, semantic role labeling(SRL) on Chinese FrameNet is divided into the subtasks of boundary identification(BI) and semantic role classification(SRC). These subtasks are regarded as the sequential tagging problem at the word level, respectively. We use the conditional random fields(CRFs) model to train and test on a two-fold cross-validation data set. The extracted features include 11 word-level and 15 shallow syntactic features derived from automatic base chunk parsing. We use the orthogonal array of statistics to arrange the experiment so that the best feature template is selected. The experimental results show that given the target word within a sentence, the best F-measures of SRL can achieve 60.42%. For the BI and SRC subtasks, the best Fmeasures are 70.55 and 81%, respectively. The statistical t-test shows that the improvement of our SRL model is not significant after appending the base chunk features.
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