Semantic Role Labeling. Palmer, M., Gildea, D., & Xue, N. Acm Transactions On Asian Language Information Processing, 5(3):228-244, Morgan & Claypool publishers, 2006.
Semantic Role Labeling [link]Website  abstract   bibtex   
Automatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations. This technique has been widely studied in the recent years, but mostly with data in newswire domains. Here, we report on a SRL model for identifying the semantic roles of biomedical predicates describing protein transport in GeneRIFs - manually curated sentences focusing on gene functions. To avoid the computational cost of syntactic parsing, and because the boundaries of our protein transport roles often did not match up with syntactic phrase boundaries, we approached this problem with a word-chunking paradigm and trained support vector machine classifiers to classify words as being at the beginning, inside or outside of a protein transport role.
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 year = {2006},
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 abstract = {Automatic semantic role labeling (SRL) is a natural language processing (NLP) technique that maps sentences to semantic representations. This technique has been widely studied in the recent years, but mostly with data in newswire domains. Here, we report on a SRL model for identifying the semantic roles of biomedical predicates describing protein transport in GeneRIFs - manually curated sentences focusing on gene functions. To avoid the computational cost of syntactic parsing, and because the boundaries of our protein transport roles often did not match up with syntactic phrase boundaries, we approached this problem with a word-chunking paradigm and trained support vector machine classifiers to classify words as being at the beginning, inside or outside of a protein transport role.},
 bibtype = {article},
 author = {Palmer, Martha and Gildea, Daniel and Xue, Nianwen},
 journal = {Acm Transactions On Asian Language Information Processing},
 number = {3}
}

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