Dmeta-embedding-zh / README.md
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metadata
tags:
  - sentence-transformers
  - feature-extraction
  - sentence-similarity
  - mteb
  - RAG
model-index:
  - name: Dmeta-embedding
    results:
      - task:
          type: STS
        dataset:
          type: C-MTEB/AFQMC
          name: MTEB AFQMC
          config: default
          split: validation
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 65.60825224706932
          - type: cos_sim_spearman
            value: 71.12862586297193
          - type: euclidean_pearson
            value: 70.18130275750404
          - type: euclidean_spearman
            value: 71.12862586297193
          - type: manhattan_pearson
            value: 70.14470398075396
          - type: manhattan_spearman
            value: 71.05226975911737
      - task:
          type: STS
        dataset:
          type: C-MTEB/ATEC
          name: MTEB ATEC
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 65.52386345655479
          - type: cos_sim_spearman
            value: 64.64245253181382
          - type: euclidean_pearson
            value: 73.20157662981914
          - type: euclidean_spearman
            value: 64.64245253178956
          - type: manhattan_pearson
            value: 73.22837571756348
          - type: manhattan_spearman
            value: 64.62632334391418
      - task:
          type: Classification
        dataset:
          type: mteb/amazon_reviews_multi
          name: MTEB AmazonReviewsClassification (zh)
          config: zh
          split: test
          revision: 1399c76144fd37290681b995c656ef9b2e06e26d
        metrics:
          - type: accuracy
            value: 44.925999999999995
          - type: f1
            value: 42.82555191308971
      - task:
          type: STS
        dataset:
          type: C-MTEB/BQ
          name: MTEB BQ
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 71.35236446393156
          - type: cos_sim_spearman
            value: 72.29629643702184
          - type: euclidean_pearson
            value: 70.94570179874498
          - type: euclidean_spearman
            value: 72.29629297226953
          - type: manhattan_pearson
            value: 70.84463025501125
          - type: manhattan_spearman
            value: 72.24527021975821
      - task:
          type: Clustering
        dataset:
          type: C-MTEB/CLSClusteringP2P
          name: MTEB CLSClusteringP2P
          config: default
          split: test
          revision: None
        metrics:
          - type: v_measure
            value: 40.24232916894152
      - task:
          type: Clustering
        dataset:
          type: C-MTEB/CLSClusteringS2S
          name: MTEB CLSClusteringS2S
          config: default
          split: test
          revision: None
        metrics:
          - type: v_measure
            value: 39.167806226929706
      - task:
          type: Reranking
        dataset:
          type: C-MTEB/CMedQAv1-reranking
          name: MTEB CMedQAv1
          config: default
          split: test
          revision: None
        metrics:
          - type: map
            value: 88.48837920106357
          - type: mrr
            value: 90.36861111111111
      - task:
          type: Reranking
        dataset:
          type: C-MTEB/CMedQAv2-reranking
          name: MTEB CMedQAv2
          config: default
          split: test
          revision: None
        metrics:
          - type: map
            value: 89.17878171657071
          - type: mrr
            value: 91.35805555555555
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/CmedqaRetrieval
          name: MTEB CmedqaRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 25.751
          - type: map_at_10
            value: 38.946
          - type: map_at_100
            value: 40.855000000000004
          - type: map_at_1000
            value: 40.953
          - type: map_at_3
            value: 34.533
          - type: map_at_5
            value: 36.905
          - type: mrr_at_1
            value: 39.235
          - type: mrr_at_10
            value: 47.713
          - type: mrr_at_100
            value: 48.71
          - type: mrr_at_1000
            value: 48.747
          - type: mrr_at_3
            value: 45.086
          - type: mrr_at_5
            value: 46.498
          - type: ndcg_at_1
            value: 39.235
          - type: ndcg_at_10
            value: 45.831
          - type: ndcg_at_100
            value: 53.162
          - type: ndcg_at_1000
            value: 54.800000000000004
          - type: ndcg_at_3
            value: 40.188
          - type: ndcg_at_5
            value: 42.387
          - type: precision_at_1
            value: 39.235
          - type: precision_at_10
            value: 10.273
          - type: precision_at_100
            value: 1.627
          - type: precision_at_1000
            value: 0.183
          - type: precision_at_3
            value: 22.772000000000002
          - type: precision_at_5
            value: 16.524
          - type: recall_at_1
            value: 25.751
          - type: recall_at_10
            value: 57.411
          - type: recall_at_100
            value: 87.44
          - type: recall_at_1000
            value: 98.386
          - type: recall_at_3
            value: 40.416000000000004
          - type: recall_at_5
            value: 47.238
      - task:
          type: PairClassification
        dataset:
          type: C-MTEB/CMNLI
          name: MTEB Cmnli
          config: default
          split: validation
          revision: None
        metrics:
          - type: cos_sim_accuracy
            value: 83.59591100420926
          - type: cos_sim_ap
            value: 90.65538153970263
          - type: cos_sim_f1
            value: 84.76466651795673
          - type: cos_sim_precision
            value: 81.04073363190446
          - type: cos_sim_recall
            value: 88.84732288987608
          - type: dot_accuracy
            value: 83.59591100420926
          - type: dot_ap
            value: 90.64355541781003
          - type: dot_f1
            value: 84.76466651795673
          - type: dot_precision
            value: 81.04073363190446
          - type: dot_recall
            value: 88.84732288987608
          - type: euclidean_accuracy
            value: 83.59591100420926
          - type: euclidean_ap
            value: 90.6547878194287
          - type: euclidean_f1
            value: 84.76466651795673
          - type: euclidean_precision
            value: 81.04073363190446
          - type: euclidean_recall
            value: 88.84732288987608
          - type: manhattan_accuracy
            value: 83.51172579675286
          - type: manhattan_ap
            value: 90.59941589844144
          - type: manhattan_f1
            value: 84.51827242524917
          - type: manhattan_precision
            value: 80.28613507258574
          - type: manhattan_recall
            value: 89.22141688099134
          - type: max_accuracy
            value: 83.59591100420926
          - type: max_ap
            value: 90.65538153970263
          - type: max_f1
            value: 84.76466651795673
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/CovidRetrieval
          name: MTEB CovidRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 63.251000000000005
          - type: map_at_10
            value: 72.442
          - type: map_at_100
            value: 72.79299999999999
          - type: map_at_1000
            value: 72.80499999999999
          - type: map_at_3
            value: 70.293
          - type: map_at_5
            value: 71.571
          - type: mrr_at_1
            value: 63.541000000000004
          - type: mrr_at_10
            value: 72.502
          - type: mrr_at_100
            value: 72.846
          - type: mrr_at_1000
            value: 72.858
          - type: mrr_at_3
            value: 70.39
          - type: mrr_at_5
            value: 71.654
          - type: ndcg_at_1
            value: 63.541000000000004
          - type: ndcg_at_10
            value: 76.774
          - type: ndcg_at_100
            value: 78.389
          - type: ndcg_at_1000
            value: 78.678
          - type: ndcg_at_3
            value: 72.47
          - type: ndcg_at_5
            value: 74.748
          - type: precision_at_1
            value: 63.541000000000004
          - type: precision_at_10
            value: 9.115
          - type: precision_at_100
            value: 0.9860000000000001
          - type: precision_at_1000
            value: 0.101
          - type: precision_at_3
            value: 26.379
          - type: precision_at_5
            value: 16.965
          - type: recall_at_1
            value: 63.251000000000005
          - type: recall_at_10
            value: 90.253
          - type: recall_at_100
            value: 97.576
          - type: recall_at_1000
            value: 99.789
          - type: recall_at_3
            value: 78.635
          - type: recall_at_5
            value: 84.141
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/DuRetrieval
          name: MTEB DuRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 23.597
          - type: map_at_10
            value: 72.411
          - type: map_at_100
            value: 75.58500000000001
          - type: map_at_1000
            value: 75.64800000000001
          - type: map_at_3
            value: 49.61
          - type: map_at_5
            value: 62.527
          - type: mrr_at_1
            value: 84.65
          - type: mrr_at_10
            value: 89.43900000000001
          - type: mrr_at_100
            value: 89.525
          - type: mrr_at_1000
            value: 89.529
          - type: mrr_at_3
            value: 89
          - type: mrr_at_5
            value: 89.297
          - type: ndcg_at_1
            value: 84.65
          - type: ndcg_at_10
            value: 81.47
          - type: ndcg_at_100
            value: 85.198
          - type: ndcg_at_1000
            value: 85.828
          - type: ndcg_at_3
            value: 79.809
          - type: ndcg_at_5
            value: 78.55
          - type: precision_at_1
            value: 84.65
          - type: precision_at_10
            value: 39.595
          - type: precision_at_100
            value: 4.707
          - type: precision_at_1000
            value: 0.485
          - type: precision_at_3
            value: 71.61699999999999
          - type: precision_at_5
            value: 60.45
          - type: recall_at_1
            value: 23.597
          - type: recall_at_10
            value: 83.34
          - type: recall_at_100
            value: 95.19800000000001
          - type: recall_at_1000
            value: 98.509
          - type: recall_at_3
            value: 52.744
          - type: recall_at_5
            value: 68.411
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/EcomRetrieval
          name: MTEB EcomRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 53.1
          - type: map_at_10
            value: 63.359
          - type: map_at_100
            value: 63.9
          - type: map_at_1000
            value: 63.909000000000006
          - type: map_at_3
            value: 60.95
          - type: map_at_5
            value: 62.305
          - type: mrr_at_1
            value: 53.1
          - type: mrr_at_10
            value: 63.359
          - type: mrr_at_100
            value: 63.9
          - type: mrr_at_1000
            value: 63.909000000000006
          - type: mrr_at_3
            value: 60.95
          - type: mrr_at_5
            value: 62.305
          - type: ndcg_at_1
            value: 53.1
          - type: ndcg_at_10
            value: 68.418
          - type: ndcg_at_100
            value: 70.88499999999999
          - type: ndcg_at_1000
            value: 71.135
          - type: ndcg_at_3
            value: 63.50599999999999
          - type: ndcg_at_5
            value: 65.92
          - type: precision_at_1
            value: 53.1
          - type: precision_at_10
            value: 8.43
          - type: precision_at_100
            value: 0.955
          - type: precision_at_1000
            value: 0.098
          - type: precision_at_3
            value: 23.633000000000003
          - type: precision_at_5
            value: 15.340000000000002
          - type: recall_at_1
            value: 53.1
          - type: recall_at_10
            value: 84.3
          - type: recall_at_100
            value: 95.5
          - type: recall_at_1000
            value: 97.5
          - type: recall_at_3
            value: 70.89999999999999
          - type: recall_at_5
            value: 76.7
      - task:
          type: Classification
        dataset:
          type: C-MTEB/IFlyTek-classification
          name: MTEB IFlyTek
          config: default
          split: validation
          revision: None
        metrics:
          - type: accuracy
            value: 48.303193535975375
          - type: f1
            value: 35.96559358693866
      - task:
          type: Classification
        dataset:
          type: C-MTEB/JDReview-classification
          name: MTEB JDReview
          config: default
          split: test
          revision: None
        metrics:
          - type: accuracy
            value: 85.06566604127579
          - type: ap
            value: 52.0596483757231
          - type: f1
            value: 79.5196835127668
      - task:
          type: STS
        dataset:
          type: C-MTEB/LCQMC
          name: MTEB LCQMC
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 74.48499423626059
          - type: cos_sim_spearman
            value: 78.75806756061169
          - type: euclidean_pearson
            value: 78.47917601852879
          - type: euclidean_spearman
            value: 78.75807199272622
          - type: manhattan_pearson
            value: 78.40207586289772
          - type: manhattan_spearman
            value: 78.6911776964119
      - task:
          type: Reranking
        dataset:
          type: C-MTEB/Mmarco-reranking
          name: MTEB MMarcoReranking
          config: default
          split: dev
          revision: None
        metrics:
          - type: map
            value: 24.75987466552363
          - type: mrr
            value: 23.40515873015873
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/MMarcoRetrieval
          name: MTEB MMarcoRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 58.026999999999994
          - type: map_at_10
            value: 67.50699999999999
          - type: map_at_100
            value: 67.946
          - type: map_at_1000
            value: 67.96600000000001
          - type: map_at_3
            value: 65.503
          - type: map_at_5
            value: 66.649
          - type: mrr_at_1
            value: 60.20100000000001
          - type: mrr_at_10
            value: 68.271
          - type: mrr_at_100
            value: 68.664
          - type: mrr_at_1000
            value: 68.682
          - type: mrr_at_3
            value: 66.47800000000001
          - type: mrr_at_5
            value: 67.499
          - type: ndcg_at_1
            value: 60.20100000000001
          - type: ndcg_at_10
            value: 71.697
          - type: ndcg_at_100
            value: 73.736
          - type: ndcg_at_1000
            value: 74.259
          - type: ndcg_at_3
            value: 67.768
          - type: ndcg_at_5
            value: 69.72
          - type: precision_at_1
            value: 60.20100000000001
          - type: precision_at_10
            value: 8.927999999999999
          - type: precision_at_100
            value: 0.9950000000000001
          - type: precision_at_1000
            value: 0.104
          - type: precision_at_3
            value: 25.883
          - type: precision_at_5
            value: 16.55
          - type: recall_at_1
            value: 58.026999999999994
          - type: recall_at_10
            value: 83.966
          - type: recall_at_100
            value: 93.313
          - type: recall_at_1000
            value: 97.426
          - type: recall_at_3
            value: 73.342
          - type: recall_at_5
            value: 77.997
      - task:
          type: Classification
        dataset:
          type: mteb/amazon_massive_intent
          name: MTEB MassiveIntentClassification (zh-CN)
          config: zh-CN
          split: test
          revision: 31efe3c427b0bae9c22cbb560b8f15491cc6bed7
        metrics:
          - type: accuracy
            value: 71.1600537995965
          - type: f1
            value: 68.8126216609964
      - task:
          type: Classification
        dataset:
          type: mteb/amazon_massive_scenario
          name: MTEB MassiveScenarioClassification (zh-CN)
          config: zh-CN
          split: test
          revision: 7d571f92784cd94a019292a1f45445077d0ef634
        metrics:
          - type: accuracy
            value: 73.54068594485541
          - type: f1
            value: 73.46845879869848
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/MedicalRetrieval
          name: MTEB MedicalRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 54.900000000000006
          - type: map_at_10
            value: 61.363
          - type: map_at_100
            value: 61.924
          - type: map_at_1000
            value: 61.967000000000006
          - type: map_at_3
            value: 59.767
          - type: map_at_5
            value: 60.802
          - type: mrr_at_1
            value: 55.1
          - type: mrr_at_10
            value: 61.454
          - type: mrr_at_100
            value: 62.016000000000005
          - type: mrr_at_1000
            value: 62.059
          - type: mrr_at_3
            value: 59.882999999999996
          - type: mrr_at_5
            value: 60.893
          - type: ndcg_at_1
            value: 54.900000000000006
          - type: ndcg_at_10
            value: 64.423
          - type: ndcg_at_100
            value: 67.35900000000001
          - type: ndcg_at_1000
            value: 68.512
          - type: ndcg_at_3
            value: 61.224000000000004
          - type: ndcg_at_5
            value: 63.083
          - type: precision_at_1
            value: 54.900000000000006
          - type: precision_at_10
            value: 7.3999999999999995
          - type: precision_at_100
            value: 0.882
          - type: precision_at_1000
            value: 0.097
          - type: precision_at_3
            value: 21.8
          - type: precision_at_5
            value: 13.98
          - type: recall_at_1
            value: 54.900000000000006
          - type: recall_at_10
            value: 74
          - type: recall_at_100
            value: 88.2
          - type: recall_at_1000
            value: 97.3
          - type: recall_at_3
            value: 65.4
          - type: recall_at_5
            value: 69.89999999999999
      - task:
          type: Classification
        dataset:
          type: C-MTEB/MultilingualSentiment-classification
          name: MTEB MultilingualSentiment
          config: default
          split: validation
          revision: None
        metrics:
          - type: accuracy
            value: 75.15666666666667
          - type: f1
            value: 74.8306375354435
      - task:
          type: PairClassification
        dataset:
          type: C-MTEB/OCNLI
          name: MTEB Ocnli
          config: default
          split: validation
          revision: None
        metrics:
          - type: cos_sim_accuracy
            value: 83.10774228478614
          - type: cos_sim_ap
            value: 87.17679348388666
          - type: cos_sim_f1
            value: 84.59302325581395
          - type: cos_sim_precision
            value: 78.15577439570276
          - type: cos_sim_recall
            value: 92.18585005279832
          - type: dot_accuracy
            value: 83.10774228478614
          - type: dot_ap
            value: 87.17679348388666
          - type: dot_f1
            value: 84.59302325581395
          - type: dot_precision
            value: 78.15577439570276
          - type: dot_recall
            value: 92.18585005279832
          - type: euclidean_accuracy
            value: 83.10774228478614
          - type: euclidean_ap
            value: 87.17679348388666
          - type: euclidean_f1
            value: 84.59302325581395
          - type: euclidean_precision
            value: 78.15577439570276
          - type: euclidean_recall
            value: 92.18585005279832
          - type: manhattan_accuracy
            value: 82.67460747157553
          - type: manhattan_ap
            value: 86.94296334435238
          - type: manhattan_f1
            value: 84.32327166504382
          - type: manhattan_precision
            value: 78.22944896115628
          - type: manhattan_recall
            value: 91.4466737064414
          - type: max_accuracy
            value: 83.10774228478614
          - type: max_ap
            value: 87.17679348388666
          - type: max_f1
            value: 84.59302325581395
      - task:
          type: Classification
        dataset:
          type: C-MTEB/OnlineShopping-classification
          name: MTEB OnlineShopping
          config: default
          split: test
          revision: None
        metrics:
          - type: accuracy
            value: 93.24999999999999
          - type: ap
            value: 90.98617641063584
          - type: f1
            value: 93.23447883650289
      - task:
          type: STS
        dataset:
          type: C-MTEB/PAWSX
          name: MTEB PAWSX
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 41.071417937737856
          - type: cos_sim_spearman
            value: 45.049199344455424
          - type: euclidean_pearson
            value: 44.913450096830786
          - type: euclidean_spearman
            value: 45.05733424275291
          - type: manhattan_pearson
            value: 44.881623825912065
          - type: manhattan_spearman
            value: 44.989923561416596
      - task:
          type: STS
        dataset:
          type: C-MTEB/QBQTC
          name: MTEB QBQTC
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 41.38238052689359
          - type: cos_sim_spearman
            value: 42.61949690594399
          - type: euclidean_pearson
            value: 40.61261500356766
          - type: euclidean_spearman
            value: 42.619626605620724
          - type: manhattan_pearson
            value: 40.8886109204474
          - type: manhattan_spearman
            value: 42.75791523010463
      - task:
          type: STS
        dataset:
          type: mteb/sts22-crosslingual-sts
          name: MTEB STS22 (zh)
          config: zh
          split: test
          revision: 6d1ba47164174a496b7fa5d3569dae26a6813b80
        metrics:
          - type: cos_sim_pearson
            value: 62.10977863727196
          - type: cos_sim_spearman
            value: 63.843727112473225
          - type: euclidean_pearson
            value: 63.25133487817196
          - type: euclidean_spearman
            value: 63.843727112473225
          - type: manhattan_pearson
            value: 63.58749018644103
          - type: manhattan_spearman
            value: 63.83820575456674
      - task:
          type: STS
        dataset:
          type: C-MTEB/STSB
          name: MTEB STSB
          config: default
          split: test
          revision: None
        metrics:
          - type: cos_sim_pearson
            value: 79.30616496720054
          - type: cos_sim_spearman
            value: 80.767935782436
          - type: euclidean_pearson
            value: 80.4160642670106
          - type: euclidean_spearman
            value: 80.76820284024356
          - type: manhattan_pearson
            value: 80.27318714580251
          - type: manhattan_spearman
            value: 80.61030164164964
      - task:
          type: Reranking
        dataset:
          type: C-MTEB/T2Reranking
          name: MTEB T2Reranking
          config: default
          split: dev
          revision: None
        metrics:
          - type: map
            value: 66.26242871142425
          - type: mrr
            value: 76.20689863623174
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/T2Retrieval
          name: MTEB T2Retrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 26.240999999999996
          - type: map_at_10
            value: 73.009
          - type: map_at_100
            value: 76.893
          - type: map_at_1000
            value: 76.973
          - type: map_at_3
            value: 51.339
          - type: map_at_5
            value: 63.003
          - type: mrr_at_1
            value: 87.458
          - type: mrr_at_10
            value: 90.44
          - type: mrr_at_100
            value: 90.558
          - type: mrr_at_1000
            value: 90.562
          - type: mrr_at_3
            value: 89.89
          - type: mrr_at_5
            value: 90.231
          - type: ndcg_at_1
            value: 87.458
          - type: ndcg_at_10
            value: 81.325
          - type: ndcg_at_100
            value: 85.61999999999999
          - type: ndcg_at_1000
            value: 86.394
          - type: ndcg_at_3
            value: 82.796
          - type: ndcg_at_5
            value: 81.219
          - type: precision_at_1
            value: 87.458
          - type: precision_at_10
            value: 40.534
          - type: precision_at_100
            value: 4.96
          - type: precision_at_1000
            value: 0.514
          - type: precision_at_3
            value: 72.444
          - type: precision_at_5
            value: 60.601000000000006
          - type: recall_at_1
            value: 26.240999999999996
          - type: recall_at_10
            value: 80.42
          - type: recall_at_100
            value: 94.118
          - type: recall_at_1000
            value: 98.02199999999999
          - type: recall_at_3
            value: 53.174
          - type: recall_at_5
            value: 66.739
      - task:
          type: Classification
        dataset:
          type: C-MTEB/TNews-classification
          name: MTEB TNews
          config: default
          split: validation
          revision: None
        metrics:
          - type: accuracy
            value: 52.40899999999999
          - type: f1
            value: 50.68532128056062
      - task:
          type: Clustering
        dataset:
          type: C-MTEB/ThuNewsClusteringP2P
          name: MTEB ThuNewsClusteringP2P
          config: default
          split: test
          revision: None
        metrics:
          - type: v_measure
            value: 65.57616085176686
      - task:
          type: Clustering
        dataset:
          type: C-MTEB/ThuNewsClusteringS2S
          name: MTEB ThuNewsClusteringS2S
          config: default
          split: test
          revision: None
        metrics:
          - type: v_measure
            value: 58.844999922904925
      - task:
          type: Retrieval
        dataset:
          type: C-MTEB/VideoRetrieval
          name: MTEB VideoRetrieval
          config: default
          split: dev
          revision: None
        metrics:
          - type: map_at_1
            value: 58.4
          - type: map_at_10
            value: 68.64
          - type: map_at_100
            value: 69.062
          - type: map_at_1000
            value: 69.073
          - type: map_at_3
            value: 66.567
          - type: map_at_5
            value: 67.89699999999999
          - type: mrr_at_1
            value: 58.4
          - type: mrr_at_10
            value: 68.64
          - type: mrr_at_100
            value: 69.062
          - type: mrr_at_1000
            value: 69.073
          - type: mrr_at_3
            value: 66.567
          - type: mrr_at_5
            value: 67.89699999999999
          - type: ndcg_at_1
            value: 58.4
          - type: ndcg_at_10
            value: 73.30600000000001
          - type: ndcg_at_100
            value: 75.276
          - type: ndcg_at_1000
            value: 75.553
          - type: ndcg_at_3
            value: 69.126
          - type: ndcg_at_5
            value: 71.519
          - type: precision_at_1
            value: 58.4
          - type: precision_at_10
            value: 8.780000000000001
          - type: precision_at_100
            value: 0.968
          - type: precision_at_1000
            value: 0.099
          - type: precision_at_3
            value: 25.5
          - type: precision_at_5
            value: 16.46
          - type: recall_at_1
            value: 58.4
          - type: recall_at_10
            value: 87.8
          - type: recall_at_100
            value: 96.8
          - type: recall_at_1000
            value: 99
          - type: recall_at_3
            value: 76.5
          - type: recall_at_5
            value: 82.3
      - task:
          type: Classification
        dataset:
          type: C-MTEB/waimai-classification
          name: MTEB Waimai
          config: default
          split: test
          revision: None
        metrics:
          - type: accuracy
            value: 86.21000000000001
          - type: ap
            value: 69.17460264576461
          - type: f1
            value: 84.68032984659226
license: apache-2.0
language:
  - zh
  - en
pipeline_tag: feature-extraction
icon

Dmeta-embedding

English | 中文

Usage | Evaluation (MTEB) | FAQ | Contact | License (Free)

Update News

  • 2024.04.01, The Dmeta-embedding small version is released. Just with 8 layers, inference is more efficient, about 30% improved.

  • 2024.02.07, The Embedding API service based on the Dmeta-embedding model now open for internal beta testing. Click the link to apply, and you will receive 400M tokens for free, which can encode approximately GB-level Chinese text.

    • Our original intention. Let everyone use Embedding technology at low cost, pay more attention to their own business and product services, and leave the complex technical parts to us.
    • How to apply and use. Click the link to submit a form. We will reply to you via [email protected] within 48 hours. In order to be compatible with the large language model (LLM) technology ecosystem, our Embedding API is used in the same way as OpenAI. We will explain the specific usage in the reply email.
    • Join the ours. In the future, we will continue to work in the direction of large language models/AIGC to bring valuable technologies to the community. You can click on the picture and scan the QR code to join our WeChat community and cheer for the AIGC together!

Dmeta-embedding is a cross-domain, cross-task, out-of-the-box Chinese embedding model. It is suitable for various scenarios such as search engine, Q&A, intelligent customer service, LLM+RAG, etc. It supports inference using tools like Transformers/Sentence-Transformers/Langchain.

Features:

  • Excellent cross-domain and scene generalization performance, currently ranked second on the MTEB Chinese leaderboard. (2024.01.25)
  • The parameter size of model is just 400MB, which can greatly reduce the cost of inference.
  • The context window length is up to 1024, more suitable for long text retrieval, RAG and other scenarios

Usage

The model supports inference through frameworks such as Sentence-Transformers, Langchain, Huggingface Transformers, etc. For specific usage, please refer to the following examples.

Sentence-Transformers

Load and inference Dmeta-embedding via sentence-transformers as following:

pip install -U sentence-transformers
from sentence_transformers import SentenceTransformer

texts1 = ["胡子长得太快怎么办?", "在香港哪里买手表好"]
texts2 = ["胡子长得快怎么办?", "怎样使胡子不浓密!", "香港买手表哪里好", "在杭州手机到哪里买"]

model = SentenceTransformer('DMetaSoul/Dmeta-embedding')
embs1 = model.encode(texts1, normalize_embeddings=True)
embs2 = model.encode(texts2, normalize_embeddings=True)

similarity = embs1 @ embs2.T
print(similarity)

for i in range(len(texts1)):
    scores = []
    for j in range(len(texts2)):
        scores.append([texts2[j], similarity[i][j]])
    scores = sorted(scores, key=lambda x:x[1], reverse=True)

    print(f"查询文本:{texts1[i]}")
    for text2, score in scores:
        print(f"相似文本:{text2},打分:{score}")
    print()

Output:

查询文本:胡子长得太快怎么办?
相似文本:胡子长得快怎么办?,打分:0.9535336494445801
相似文本:怎样使胡子不浓密!,打分:0.6776421070098877
相似文本:香港买手表哪里好,打分:0.2297907918691635
相似文本:在杭州手机到哪里买,打分:0.11386542022228241

查询文本:在香港哪里买手表好
相似文本:香港买手表哪里好,打分:0.9843372106552124
相似文本:在杭州手机到哪里买,打分:0.45211508870124817
相似文本:胡子长得快怎么办?,打分:0.19985519349575043
相似文本:怎样使胡子不浓密!,打分:0.18558596074581146

Langchain

Load and inference Dmeta-embedding via langchain as following:

pip install -U langchain
import torch
import numpy as np
from langchain.embeddings import HuggingFaceEmbeddings

model_name = "DMetaSoul/Dmeta-embedding"
model_kwargs = {'device': 'cuda' if torch.cuda.is_available() else 'cpu'}
encode_kwargs = {'normalize_embeddings': True} # set True to compute cosine similarity

model = HuggingFaceEmbeddings(
    model_name=model_name,
    model_kwargs=model_kwargs,
    encode_kwargs=encode_kwargs,
)

texts1 = ["胡子长得太快怎么办?", "在香港哪里买手表好"]
texts2 = ["胡子长得快怎么办?", "怎样使胡子不浓密!", "香港买手表哪里好", "在杭州手机到哪里买"]

embs1 = model.embed_documents(texts1)
embs2 = model.embed_documents(texts2)
embs1, embs2 = np.array(embs1), np.array(embs2)

similarity = embs1 @ embs2.T
print(similarity)

for i in range(len(texts1)):
    scores = []
    for j in range(len(texts2)):
        scores.append([texts2[j], similarity[i][j]])
    scores = sorted(scores, key=lambda x:x[1], reverse=True)

    print(f"查询文本:{texts1[i]}")
    for text2, score in scores:
        print(f"相似文本:{text2},打分:{score}")
    print()

HuggingFace Transformers

Load and inference Dmeta-embedding via HuggingFace Transformers as following:

pip install -U transformers
import torch
from transformers import AutoTokenizer, AutoModel


def mean_pooling(model_output, attention_mask):
    token_embeddings = model_output[0] #First element of model_output contains all token embeddings
    input_mask_expanded = attention_mask.unsqueeze(-1).expand(token_embeddings.size()).float()
    return torch.sum(token_embeddings * input_mask_expanded, 1) / torch.clamp(input_mask_expanded.sum(1), min=1e-9)

def cls_pooling(model_output):
    return model_output[0][:, 0]


texts1 = ["胡子长得太快怎么办?", "在香港哪里买手表好"]
texts2 = ["胡子长得快怎么办?", "怎样使胡子不浓密!", "香港买手表哪里好", "在杭州手机到哪里买"]

tokenizer = AutoTokenizer.from_pretrained('DMetaSoul/Dmeta-embedding')
model = AutoModel.from_pretrained('DMetaSoul/Dmeta-embedding')
model.eval()

with torch.no_grad():
    inputs1 = tokenizer(texts1, padding=True, truncation=True, return_tensors='pt')
    inputs2 = tokenizer(texts2, padding=True, truncation=True, return_tensors='pt')

    model_output1 = model(**inputs1)
    model_output2 = model(**inputs2)
    embs1, embs2 = cls_pooling(model_output1), cls_pooling(model_output2)
    embs1 = torch.nn.functional.normalize(embs1, p=2, dim=1).numpy()
    embs2 = torch.nn.functional.normalize(embs2, p=2, dim=1).numpy()


similarity = embs1 @ embs2.T
print(similarity)

for i in range(len(texts1)):
    scores = []
    for j in range(len(texts2)):
        scores.append([texts2[j], similarity[i][j]])
    scores = sorted(scores, key=lambda x:x[1], reverse=True)

    print(f"查询文本:{texts1[i]}")
    for text2, score in scores:
        print(f"相似文本:{text2},打分:{score}")
    print()

Evaluation

The Dmeta-embedding model ranked first in open source on the MTEB Chinese list (2024.01.25, first on the Baichuan list, that is not open source). For specific evaluation data and code, please refer to the MTEB official.

MTEB Chinese:

The Chinese leaderboard dataset was collected by the BAAI. It contains 6 classic tasks and a total of 35 Chinese datasets, covering classification, retrieval, reranking, sentence pair classification, STS and other tasks. It is the most comprehensive Embedding model at present. The world's authoritative benchmark of ability assessments.

Model Vendor Embedding dimension Avg Retrieval STS PairClassification Classification Reranking Clustering
Dmeta-embedding Our 768 67.51 70.41 64.09 88.92 70 67.17 50.96
gte-large-zh AliBaba Damo 1024 66.72 72.49 57.82 84.41 71.34 67.4 53.07
BAAI/bge-large-zh-v1.5 BAAI 1024 64.53 70.46 56.25 81.6 69.13 65.84 48.99
BAAI/bge-base-zh-v1.5 BAAI 768 63.13 69.49 53.72 79.75 68.07 65.39 47.53
text-embedding-ada-002(OpenAI) OpenAI 1536 53.02 52.0 43.35 69.56 64.31 54.28 45.68
text2vec-base 个人 768 47.63 38.79 43.41 67.41 62.19 49.45 37.66
text2vec-large 个人 1024 47.36 41.94 44.97 70.86 60.66 49.16 30.02

FAQ

1. Why does the model have so good generalization performance, and can be used to many task scenarios out of the box?

The excellent generalization ability of the model comes from the diversity of pre-training data, as well as the design of different optimization objectives for multi-task scenarios when pre-training the model.

Specifically, the mainly technical features:

  1. The first is large-scale weak label contrastive learning. Industry experience shows that out-of-the-box language models perform poorly on Embedding-related tasks. However, due to the high cost of supervised data annotation and acquisition, large-scale, high-quality weak label learning has become an optional technical route. By extracting weak labels from semi-structured data such as forums, news, Q&A communities, and encyclopedias on the Internet, and using large models to perform low-quality filtering, 1 billion-level weakly supervised text pair data is obtained.

  2. The second is high-quality supervised learning. We have collected and compiled a large-scale open source annotated sentence pair data set, including a total of 30 million sentence pair samples in encyclopedia, education, finance, medical care, law, news, academia and other fields. At the same time, we mine hard-to-negative sample pairs and use contrastive learning to better optimize the model.

  3. The last step is the optimization of retrieval tasks. Considering that search, question and answer, RAG and other scenarios are important application positions for the Embedding model, in order to enhance the cross-domain and cross-scenario performance of the model, we have specially optimized the model for retrieval tasks. The core lies in mining data from question and answer, retrieval and other data. Hard-to-negative samples use sparse and dense retrieval and other methods to construct a million-level hard-to-negative sample pair data set, which significantly improves the cross-domain retrieval performance of the model.

2. Can the model be used commercially?

Our model is based on the Apache-2.0 license and fully supports free commercial use.

3. How to reproduce the MTEB evaluation?

We provide the mteb_eval.py script in this model hub. You can run this script directly to reproduce our evaluation results.

4. What are the follow-up plans?

We will continue to work hard to provide the community with embedding models that have excellent performance, lightweight reasoning, and can be used in multiple scenarios out of the box. At the same time, we will gradually integrate embedding into the existing technology ecosystem and grow with the community!

Contact

If you encounter any problems during use, you are welcome to go to the discussion to make suggestions.

You can also send us an email: Zhao Zhonghao [email protected], Xiao Wenbin [email protected], Sun Kai [email protected]

At the same time, you are welcome to scan the QR code to join our WeChat group and build the AIGC technology ecosystem together!

License

Dmeta-embedding is licensed under the Apache-2.0 License. The released models can be used for commercial purposes free of charge.