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Models/AOA

AOA

Reported on 16 benchmarks across 4 tasks · 2 papers · 10 SOTA

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

Computer Vision10 results

  • Multi-Object TrackingonTAO
    AssocA· uses extra data· 2021-01-20
    30.56
    best: 52.4 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Multi-Object TrackingonTAO
    ClsA· uses extra data· 2021-01-20
    21.86
    best: 41.7 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Multi-Object TrackingonTAO
    LocA· uses extra data· 2021-01-20
    23.4
    best: 71.8 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Multi-Object TrackingonTAO
    TETA· uses extra data· 2021-01-20
    25.27
    best: 55.3 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Multi-Object TrackingonTAO
    Track mAP· uses extra data· 2021-01-20
    27.461
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Object TrackingonTAO
    AssocA· uses extra data· 2021-01-20
    30.56
    best: 52.4 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Object TrackingonTAO
    ClsA· uses extra data· 2021-01-20
    21.86
    best: 41.7 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Object TrackingonTAO
    LocA· uses extra data· 2021-01-20
    23.4
    best: 71.8 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Object TrackingonTAO
    TETA· uses extra data· 2021-01-20
    25.27
    best: 55.3 (AED (Co-DETR))
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040
  • Object TrackingonTAO
    Track mAP· uses extra data· 2021-01-20
    27.461
    SOTA
    1st Place Solution to ECCV-TAO-2020: Detect and Represent Any Object for TrackingarXiv:2101.08040

Natural Language Processing6 results

  • Sentiment AnalysisonSemEval-2014 Task-4
    Laptop (Acc)· 2018-04-18
    74.5
    best: 8276 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536
  • Sentiment AnalysisonSemEval-2014 Task-4
    Mean Acc (Restaurant + Laptop)· 2018-04-18
    77.85
    best: 8611 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536
  • Sentiment AnalysisonSemEval-2014 Task-4
    Restaurant (Acc)· 2018-04-18
    81.2
    best: 8946 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Laptop (Acc)· 2018-04-18
    74.5
    best: 8276 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Mean Acc (Restaurant + Laptop)· 2018-04-18
    77.85
    best: 8611 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536
  • Aspect-Based Sentiment Analysis (ABSA)onSemEval-2014 Task-4
    Restaurant (Acc)· 2018-04-18
    81.2
    best: 8946 (ABSA-DeBERTa)
    Aspect Level Sentiment Classification with Attention-over-Attention Neural NetworksarXiv:1804.06536