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 8190 of 160 papers

TitleStatusHype
Opinion-based Relational Pivoting for Cross-domain Aspect Term Extraction0
Opinion-based Relational Pivoting for Cross-domain Aspect Term Extraction0
PoD: Positional Dependency-Based Word Embedding for Aspect Term Extraction0
Predicting Degrees of Technicality in Automatic Terminology Extraction0
Progressive Self-Training with Discriminator for Aspect Term Extraction0
PTA: Enhancing Multimodal Sentiment Analysis through Pipelined Prediction and Translation-based Alignment0
Question-Driven Span Labeling Model for Aspect–Opinion Pair Extraction0
Recognition of non-domain phrases in automatically extracted lists of terms0
Requirement Tracing using Term Extraction0
Rude waiter but mouthwatering pastries! An exploratory study into Dutch Aspect-Based Sentiment Analysis0
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Benchmark Results

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