6533b82cfe1ef96bd128eb11

RESEARCH PRODUCT

RIGA at SemEval-2016 Task 8: Impact of Smatch Extensions and Character-Level Neural Translation on AMR Parsing Accuracy

Didzis GoskoGuntis Barzdins

subject

FOS: Computer and information sciencesParsingComputer Science - Computation and LanguageComputer sciencebusiness.industry02 engineering and technologyExtension (predicate logic)computer.software_genreSemEvalSet (abstract data type)Nondeterministic algorithm020204 information systemsTest setClassifier (linguistics)0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerComputation and Language (cs.CL)Natural language processingSentence

description

Two extensions to the AMR smatch scoring script are presented. The first extension com-bines the smatch scoring script with the C6.0 rule-based classifier to produce a human-readable report on the error patterns frequency observed in the scored AMR graphs. This first extension results in 4% gain over the state-of-art CAMR baseline parser by adding to it a manually crafted wrapper fixing the identified CAMR parser errors. The second extension combines a per-sentence smatch with an en-semble method for selecting the best AMR graph among the set of AMR graphs for the same sentence. This second modification au-tomatically yields further 0.4% gain when ap-plied to outputs of two nondeterministic AMR parsers: a CAMR+wrapper parser and a novel character-level neural translation AMR parser. For AMR parsing task the character-level neural translation attains surprising 7% gain over the carefully optimized word-level neural translation. Overall, we achieve smatch F1=62% on the SemEval-2016 official scor-ing set and F1=67% on the LDC2015E86 test set.

https://dx.doi.org/10.48550/arxiv.1604.01278