Varying Vector Representations and Integrating Meaning Shifts into a PageRank Model for Automatic Term Extraction

LREC 2020 Anurag NigamAnna H{\"a}ttySabine Schulte im Walde

We perform a comparative study for automatic term extraction from domain-specific language using a PageRank model with different edge-weighting methods. We vary vector space representations within the PageRank graph algorithm, and we go beyond standard co-occurrence and investigate the influence of measures of association strength and first- vs. second-order co-occurrence... (read more)

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