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Models/MMML

MMML

Reported on 17 benchmarks across 1 task · 1 paper · 17 SOTA

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

Natural Language Processing17 results

  • Sentiment AnalysisonCH-SIMS
    CORR· 2023-08-01
    73.26
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCH-SIMS
    F1· 2023-08-01
    82.9
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCH-SIMS
    MAE· 2023-08-01
    0.332
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonMOSI
    Accuracy· 2023-08-01
    90.35
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonMOSI
    F1 score· 2023-08-01
    90.35
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    Acc-5· 2023-08-01
    57.45
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    Acc-7· 2023-08-01
    54.77
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    Accuracy· 2023-08-01
    88.22
    best: 88.62 (SeMUL-PCD)
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    Corr· 2023-08-01
    81.42
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    F1· 2023-08-01
    88.04
    best: 89.04 (SeMUL-PCD)
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSEI
    MAE· 2023-08-01
    0.5072
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    Acc-2· 2023-08-01
    90.35
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    Acc-5· 2023-08-01
    60.01
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    Acc-7· 2023-08-01
    52.72
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    Corr· 2023-08-01
    0.8824
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    F1· 2023-08-01
    90.35
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264
  • Sentiment AnalysisonCMU-MOSI
    MAE· 2023-08-01
    0.5573
    SOTA
    Multimodal Multi-loss Fusion Network for Sentiment AnalysisarXiv:2308.00264