SOTAVerified

Term Extraction

Term Extraction, or Automated Term Extraction (ATE), is about extraction domain-specific terms from natural language text. For example, the sentence “We meta-analyzed mortality using random-effect models” contains the domain-specific single-word terms "meta-analyzed", "mortality" and the multi-word term "random-effect models".

Papers

Showing 4150 of 160 papers

TitleStatusHype
Extracting Mathematical Concepts with Large Language ModelsCode0
Court Judgement Labeling Using Topic Modeling and Syntactic ParsingCode0
Constituency Lattice Encoding for Aspect Term ExtractionCode0
Feature-Less End-to-End Nested Term ExtractionCode0
A Term Extraction Approach to Survey Analysis in Health Care0
A Study of Association Measures and their Combination for Arabic MWT Extraction0
Annotation of negation in the IULA Spanish Clinical Record Corpus0
Aspect Term Extraction using Graph-based Semi-Supervised Learning0
A Gold Standard for Multilingual Automatic Term Extraction from Comparable Corpora: Term Structure and Translation Equivalents0
Aspect Term Extraction for Sentiment Analysis: New Datasets, New Evaluation Measures and an Improved Unsupervised Method0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1BaselineF1-Score0.82Unverified
#ModelMetricClaimedVerifiedStatus
1Seq2Seq4ATEF1-Score0.8Unverified