In this work, we present a phenomenon-oriented comparative analysis of the two dominant approaches in English Resource Semantic (ERS) parsing: classic, knowledge-intensive and neural, data-intensive models. To reflect state-of-the-art neural NLP technologies, a factorizationbased parser is introduced that can produce Elementary Dependency Structures much more accurately than previous data-driven parsers. We conduct a suite of tests for different linguistic phenomena to analyze the grammatical competence of different parsers, where we show that, despite comparable performance overall, knowledge-and data-intensive models produce different types of errors, in a way that can be explained by their theoretical properties. This analysis is beneficial to in-depth evaluation of several representative parsing techniques and leads to new directions for parser development.
CITATION STYLE
Cao, J., Lin, Z., Sun, W., & Wan, X. (2021). Comparing knowledge-intensive and data-intensive models for english resource semantic parsing. Computational Linguistics, 47(1), 43–68. https://doi.org/10.1162/coli_a_00395
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