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Models/Dual-MRC

Dual-MRC

Reported on 13 benchmarks across 2 tasks · 1 paper · 9 SOTA

Note: results are matched by exact model name. Different papers may use the same name for different model variants.

Natural Language Processing13 results

  • Sentiment AnalysisonSemEval-2014 Task-4
    Laptop 2014 (F1)· 2021-01-04
    79.9
    best: 80.55 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval-2014 Task-4
    Restaurant 2014 (F1)· 2021-01-04
    83.73
    best: 85.38 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval
    F1· 2021-01-04
    70.32
    best: 72.46 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval
    Avg F1· 2021-01-04
    68.99
    best: 76.73 (FS-ABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval
    Laptop 2014 (F1)· 2021-01-04
    65.94
    best: 71.16 (FS-ABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval
    Restaurant 2014 (F1)· 2021-01-04
    75.95
    best: 82.29 (FS-ABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval
    Restaurant 2015 (F1)· 2021-01-04
    65.08
    best: 66.61 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Laptop 2014 (F1)· 2021-01-04
    79.9
    best: 80.55 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Restaurant 2014 (F1)· 2021-01-04
    83.73
    best: 85.38 (BARTABSA)
    SOTA
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval-2014 Task-4
    Restaurant 2015 (F1)· 2021-01-04
    74.5
    best: 80.52 (BARTABSA)
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Sentiment AnalysisonSemEval-2014 Task-4
    Restaurant 2016 (F1)· 2021-01-04
    83.33
    best: 87.92 (BARTABSA)
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Restaurant 2015 (F1)· 2021-01-04
    74.5
    best: 80.52 (BARTABSA)
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Restaurant 2016 (F1)· 2021-01-04
    83.33
    best: 87.92 (BARTABSA)
    A Joint Training Dual-MRC Framework for Aspect Based Sentiment AnalysisarXiv:2101.00816