Abstract: We present an approach for Semantic Role Labeling (SRL) using Conditional Random Fields in a joint identification/classification step. The approach
is based on shallow syntactic information
(chunks) and a number of lexicalized features such as selectional preferences and
automatically inferred similar words, extracted using lexical databases and distributional similarity metrics. We use semantic annotations from the Proposition
Bank for training and evaluate the system
using CoNLL-2005 test sets. The additional lexical information led to improvements of 15% (in-domain evaluation) and
12% (out-of-domain evaluation) on overall semantic role classification in terms of
F-measure. The gains come mostly from a
better recall, which suggests that the addition of richer lexical information can improve the coverage of existing SRL models even when very little syntactic knowledge is available.
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