SOTAVerified

Semantic Role Labeling

Semantic role labeling aims to model the predicate-argument structure of a sentence and is often described as answering "Who did what to whom". BIO notation is typically used for semantic role labeling.

Example:

| Housing | starts | are | expected | to | quicken | a | bit | from | August’s | pace | | --- | --- | --- | --- | --- | --- | --- | --- | --- | --- | --- | | B-ARG1 | I-ARG1 | O | O | O | V | B-ARG2 | I-ARG2 | B-ARG3 | I-ARG3 | I-ARG3 |

Papers

Showing 151175 of 620 papers

TitleStatusHype
Affordance Extraction and Inference based on Semantic Role Labeling0
Compositional and Lexical Semantics in RoBERTa, BERT and DistilBERT: A Case Study on CoQA0
A Semantic Role-based Approach to Open-Domain Automatic Question Generation0
Comparing Czech and English AMRs0
A Semantic Approach to Summarization0
An Analysis under a Unified Fomulation of Learning Algorithms with Output Constraints0
Combining Seemingly Incompatible Corpora for Implicit Semantic Role Labeling0
A Robust Approach to Aligning Heterogeneous Lexical Resources0
CMILLS: Adapting Semantic Role Labeling Features to Dependency Parsing0
CLAR: A Cross-Lingual Argument Regularizer for Semantic Role Labeling0
Argument Linking: A Survey and Forecast0
AMR Parsing with Instruction Fine-tuned Pre-trained Language Models0
Advancements in Reordering Models for Statistical Machine Translation0
Adapting a part-of-speech tagset to non-standard text: The case of STTS0
Chinese Semantic Role Labeling with Bidirectional Recurrent Neural Networks0
Chinese Semantic Role Labeling using High-quality Syntactic Knowledge0
Argument Inference from Relevant Event Mentions in Chinese Argument Extraction0
Characterizing the Entities in Harmful Memes: Who is the Hero, the Villain, the Victim?0
AMRize, then Parse! Enhancing AMR Parsing with PseudoAMR Data0
Capturing Argument Relationship for Chinese Semantic Role Labeling0
Can Selectional Preferences Help Automatic Semantic Role Labeling?0
Can predicate-argument relationships be extracted from UD trees?0
A Progressive Learning Approach to Chinese SRL Using Heterogeneous Data0
A Dual-Layer Semantic Role Labeling System0
Can Discourse Relations be Identified Incrementally?0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1HeSyFuF188.59Unverified
2CRF2o + RoBERTaF188.32Unverified
3MRC-SRLF188.3Unverified
4ReCAT(pretrained on wikitext103)F188Unverified
5SRL-MM + XLNetF187.67Unverified
6CRF2o + BERTF187.66Unverified
7RoBERTa+RegCCRFF187.51Unverified
8RoBERTa+CRFF187.27Unverified
9BiLSTM-Span (Ensemble)F187Unverified
10BiLSTM-SpanF186.2Unverified
#ModelMetricClaimedVerifiedStatus
1MRC-SRLF190Unverified
2SRL-MM + XLNetF189.8Unverified
3CRF2o + RoBERTaF189.54Unverified
4HeSyFuF189.04Unverified
5CRF2o + BERTF189.03Unverified
6Mohammadshahi and Henderson (2021)F188.93Unverified
7BiLSTM-Span (Ensemble, predicates given)F188.5Unverified
8CRF2oF187.87Unverified
9Li et al. (2019) (Ensemble)F187.7Unverified
10BiLSTM-SpanF187.6Unverified
#ModelMetricClaimedVerifiedStatus
1DeepStruct multi-task w/ finetuneF192.1Unverified
2DeepStruct multi-taskF192Unverified
#ModelMetricClaimedVerifiedStatus
1DeepStruct multi-taskF195.5Unverified
2DeepStruct multi-task w/ finetuneF195.2Unverified
#ModelMetricClaimedVerifiedStatus
1DeepStruct multi-taskF197.2Unverified
2DeepStruct multi-task w/ finetuneF196Unverified
#ModelMetricClaimedVerifiedStatus
1Ours (High-Order model)F1 (Arg.)90.2Unverified
#ModelMetricClaimedVerifiedStatus
1HeSyFuAvg. F188.59Unverified