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model update

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README.md ADDED
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+ ---
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+ datasets:
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+ - relbert/relational_similarity
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+ model-index:
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+ - name: relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex
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+ results:
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+ - task:
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+ name: Relation Mapping
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+ type: sorting-task
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+ dataset:
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+ name: Relation Mapping
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+ args: relbert/relation_mapping
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+ type: relation-mapping
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.806984126984127
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+ - task:
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+ name: Analogy Questions (SAT full)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: SAT full
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.6016042780748663
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+ - task:
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+ name: Analogy Questions (SAT)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: SAT
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.6053412462908012
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+ - task:
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+ name: Analogy Questions (BATS)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: BATS
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.7787659811006115
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+ - task:
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+ name: Analogy Questions (Google)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: Google
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.926
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+ - task:
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+ name: Analogy Questions (U2)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: U2
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.6008771929824561
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+ - task:
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+ name: Analogy Questions (U4)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: U4
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.5879629629629629
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+ - task:
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+ name: Analogy Questions (ConceptNet Analogy)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: ConceptNet Analogy
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.36577181208053694
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+ - task:
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+ name: Analogy Questions (TREX Analogy)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: TREX Analogy
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.6939890710382514
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+ - task:
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+ name: Analogy Questions (NELL-ONE Analogy)
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+ type: multiple-choice-qa
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+ dataset:
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+ name: NELL-ONE Analogy
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+ args: relbert/analogy_questions
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+ type: analogy-questions
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+ metrics:
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+ - name: Accuracy
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+ type: accuracy
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+ value: 0.845
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+ - task:
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+ name: Lexical Relation Classification (BLESS)
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+ type: classification
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+ dataset:
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+ name: BLESS
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+ args: relbert/lexical_relation_classification
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+ type: relation-classification
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+ metrics:
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+ - name: F1
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+ type: f1
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+ value: 0.9231580533373512
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+ - name: F1 (macro)
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+ type: f1_macro
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+ value: 0.9209337542310293
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+ - task:
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+ name: Lexical Relation Classification (CogALexV)
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+ type: classification
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+ dataset:
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+ name: CogALexV
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+ args: relbert/lexical_relation_classification
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+ type: relation-classification
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+ metrics:
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+ - name: F1
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+ type: f1
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+ value: 0.8511737089201878
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+ - name: F1 (macro)
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+ type: f1_macro
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+ value: 0.6840382588713123
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+ - task:
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+ name: Lexical Relation Classification (EVALution)
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+ type: classification
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+ dataset:
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+ name: BLESS
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+ args: relbert/lexical_relation_classification
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+ type: relation-classification
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+ metrics:
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+ - name: F1
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+ type: f1
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+ value: 0.6776814734561214
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+ - name: F1 (macro)
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+ type: f1_macro
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+ value: 0.6741581804439568
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+ - task:
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+ name: Lexical Relation Classification (K&H+N)
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+ type: classification
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+ dataset:
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+ name: K&H+N
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+ args: relbert/lexical_relation_classification
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+ type: relation-classification
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+ metrics:
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+ - name: F1
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+ type: f1
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+ value: 0.9545106767754051
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+ - name: F1 (macro)
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+ type: f1_macro
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+ value: 0.8794140203700929
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+ - task:
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+ name: Lexical Relation Classification (ROOT09)
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+ type: classification
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+ dataset:
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+ name: ROOT09
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+ args: relbert/lexical_relation_classification
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+ type: relation-classification
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+ metrics:
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+ - name: F1
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+ type: f1
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+ value: 0.8937637104356001
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+ - name: F1 (macro)
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+ type: f1_macro
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+ value: 0.8889590618516027
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+
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+ ---
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+ # relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex
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+
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+ RelBERT based on [roberta-large](https://huggingface.co/roberta-large) fine-tuned on [relbert/relational_similarity](https://huggingface.co/datasets/relbert/relational_similarity) (see the [`relbert`](https://github.com/asahi417/relbert) for more detail of fine-tuning).
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+ This model achieves the following results on the relation understanding tasks:
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+ - Analogy Question ([dataset](https://huggingface.co/datasets/relbert/analogy_questions), [full result](https://huggingface.co/relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex/raw/main/analogy.forward.json)):
194
+ - Accuracy on SAT (full): 0.6016042780748663
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+ - Accuracy on SAT: 0.6053412462908012
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+ - Accuracy on BATS: 0.7787659811006115
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+ - Accuracy on U2: 0.6008771929824561
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+ - Accuracy on U4: 0.5879629629629629
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+ - Accuracy on Google: 0.926
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+ - Accuracy on ConceptNet Analogy: 0.36577181208053694
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+ - Accuracy on T-Rex Analogy: 0.6939890710382514
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+ - Accuracy on NELL-ONE Analogy: 0.845
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+ - Lexical Relation Classification ([dataset](https://huggingface.co/datasets/relbert/lexical_relation_classification), [full result](https://huggingface.co/relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex/raw/main/classification.json)):
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+ - Micro F1 score on BLESS: 0.9231580533373512
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+ - Micro F1 score on CogALexV: 0.8511737089201878
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+ - Micro F1 score on EVALution: 0.6776814734561214
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+ - Micro F1 score on K&H+N: 0.9545106767754051
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+ - Micro F1 score on ROOT09: 0.8937637104356001
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+ - Relation Mapping ([dataset](https://huggingface.co/datasets/relbert/relation_mapping), [full result](https://huggingface.co/relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex/raw/main/relation_mapping.json)):
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+ - Accuracy on Relation Mapping: 0.806984126984127
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+
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+
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+ ### Usage
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+ This model can be used through the [relbert library](https://github.com/asahi417/relbert). Install the library via pip
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+ ```shell
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+ pip install relbert
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+ ```
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+ and activate model as below.
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+ ```python
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+ from relbert import RelBERT
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+ model = RelBERT("relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex")
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+ vector = model.get_embedding(['Tokyo', 'Japan']) # shape of (n_dim, )
223
+ ```
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+
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+ ### Training hyperparameters
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+
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+ - model: roberta-large
228
+ - max_length: 64
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+ - epoch: 20
230
+ - batch: 64
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+ - random_seed: 0
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+ - lr: 5e-06
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+ - lr_warmup: 10
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+ - aggregation_mode: average_no_mask
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+ - data: relbert/relational_similarity
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+ - data_name: nell_relational_similarity.semeval2012_relational_similarity.t_rex_relational_similarity
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+ - exclude_relation: None
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+ - split: train
239
+ - split_valid: validation
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+ - loss_function: nce
241
+ - classification_loss: False
242
+ - loss_function_config: {'temperature': 0.05, 'num_negative': 300, 'num_positive': 10}
243
+ - augment_negative_by_positive: False
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+
245
+ See the full configuration at [config file](https://huggingface.co/relbert/relbert-roberta-large-nce-e-semeval2012-nell-t-rex/raw/main/finetuning_config.json).
246
+
247
+ ### Reference
248
+ If you use any resource from RelBERT, please consider to cite our [paper](https://aclanthology.org/2021.emnlp-main.712/).
249
+
250
+ ```
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+
252
+ @inproceedings{ushio-etal-2021-distilling,
253
+ title = "Distilling Relation Embeddings from Pretrained Language Models",
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+ author = "Ushio, Asahi and
255
+ Camacho-Collados, Jose and
256
+ Schockaert, Steven",
257
+ booktitle = "Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing",
258
+ month = nov,
259
+ year = "2021",
260
+ address = "Online and Punta Cana, Dominican Republic",
261
+ publisher = "Association for Computational Linguistics",
262
+ url = "https://aclanthology.org/2021.emnlp-main.712",
263
+ doi = "10.18653/v1/2021.emnlp-main.712",
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+ pages = "9044--9062",
265
+ abstract = "Pre-trained language models have been found to capture a surprisingly rich amount of lexical knowledge, ranging from commonsense properties of everyday concepts to detailed factual knowledge about named entities. Among others, this makes it possible to distill high-quality word vectors from pre-trained language models. However, it is currently unclear to what extent it is possible to distill relation embeddings, i.e. vectors that characterize the relationship between two words. Such relation embeddings are appealing because they can, in principle, encode relational knowledge in a more fine-grained way than is possible with knowledge graphs. To obtain relation embeddings from a pre-trained language model, we encode word pairs using a (manually or automatically generated) prompt, and we fine-tune the language model such that relationally similar word pairs yield similar output vectors. We find that the resulting relation embeddings are highly competitive on analogy (unsupervised) and relation classification (supervised) benchmarks, even without any task-specific fine-tuning. Source code to reproduce our experimental results and the model checkpoints are available in the following repository: https://github.com/asahi417/relbert",
266
+ }
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+
268
+ ```
analogy.bidirection.json ADDED
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+ {"sat_full/test": 0.6497326203208557, "sat/test": 0.6617210682492581, "u2/test": 0.631578947368421, "u4/test": 0.6597222222222222, "google/test": 0.908, "bats/test": 0.7848804891606448, "t_rex_relational_similarity/test": 0.7049180327868853, "conceptnet_relational_similarity/test": 0.41778523489932884, "nell_relational_similarity/test": 0.8383333333333334, "sat/validation": 0.5405405405405406, "u2/validation": 0.5833333333333334, "u4/validation": 0.6666666666666666, "google/validation": 1.0, "bats/validation": 0.8190954773869347, "semeval2012_relational_similarity/validation": 0.7088607594936709, "t_rex_relational_similarity/validation": 0.3548387096774194, "conceptnet_relational_similarity/validation": 0.3516187050359712, "nell_relational_similarity/validation": 0.79}
analogy.forward.json ADDED
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+ {"sat_full/test": 0.6016042780748663, "sat/test": 0.6053412462908012, "u2/test": 0.6008771929824561, "u4/test": 0.5879629629629629, "google/test": 0.926, "bats/test": 0.7787659811006115, "t_rex_relational_similarity/test": 0.6939890710382514, "conceptnet_relational_similarity/test": 0.36577181208053694, "nell_relational_similarity/test": 0.845, "nell_relational_similarity/validation": 0.755, "t_rex_relational_similarity/validation": 0.35080645161290325, "conceptnet_relational_similarity/validation": 0.3183453237410072, "semeval2012_relational_similarity/validation": 0.7468354430379747, "sat/validation": 0.5675675675675675, "u2/validation": 0.4166666666666667, "u4/validation": 0.625, "google/validation": 1.0, "bats/validation": 0.8241206030150754}
analogy.reverse.json ADDED
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+ {"sat_full/test": 0.6363636363636364, "sat/test": 0.6528189910979229, "u2/test": 0.6228070175438597, "u4/test": 0.6666666666666666, "google/test": 0.888, "bats/test": 0.7498610339077265, "t_rex_relational_similarity/test": 0.7103825136612022, "conceptnet_relational_similarity/test": 0.35906040268456374, "nell_relational_similarity/test": 0.8416666666666667, "sat/validation": 0.4864864864864865, "u2/validation": 0.5416666666666666, "u4/validation": 0.625, "google/validation": 1.0, "bats/validation": 0.7437185929648241, "semeval2012_relational_similarity/validation": 0.7215189873417721, "t_rex_relational_similarity/validation": 0.33064516129032256, "conceptnet_relational_similarity/validation": 0.2994604316546763, "nell_relational_similarity/validation": 0.72}
classification.json ADDED
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+ {"lexical_relation_classification/BLESS": {"classifier_config": {"activation": "relu", "alpha": 0.0001, "batch_size": "auto", "beta_1": 0.9, "beta_2": 0.999, "early_stopping": false, "epsilon": 1e-08, "hidden_layer_sizes": [100], "learning_rate": "constant", "learning_rate_init": 0.001, "max_fun": 15000, "max_iter": 200, "momentum": 0.9, "n_iter_no_change": 10, "nesterovs_momentum": true, "power_t": 0.5, "random_state": 0, "shuffle": true, "solver": "adam", "tol": 0.0001, "validation_fraction": 0.1, "verbose": false, "warm_start": false}, "test/accuracy": 0.9231580533373512, "test/f1_macro": 0.9209337542310293, "test/f1_micro": 0.9231580533373512, "test/p_macro": 0.9209714600360462, "test/p_micro": 0.9231580533373512, "test/r_macro": 0.921308067648977, "test/r_micro": 0.9231580533373512}, "lexical_relation_classification/CogALexV": {"classifier_config": {"activation": "relu", "alpha": 0.0001, "batch_size": "auto", "beta_1": 0.9, "beta_2": 0.999, "early_stopping": false, "epsilon": 1e-08, "hidden_layer_sizes": [100], "learning_rate": "constant", "learning_rate_init": 0.001, "max_fun": 15000, "max_iter": 200, "momentum": 0.9, "n_iter_no_change": 10, "nesterovs_momentum": true, "power_t": 0.5, "random_state": 0, "shuffle": true, "solver": "adam", "tol": 0.0001, "validation_fraction": 0.1, "verbose": false, "warm_start": false}, "test/accuracy": 0.8511737089201878, "test/f1_macro": 0.6840382588713123, "test/f1_micro": 0.8511737089201878, "test/p_macro": 0.7131212333852901, "test/p_micro": 0.8511737089201878, "test/r_macro": 0.6597956300131064, "test/r_micro": 0.8511737089201878}, "lexical_relation_classification/EVALution": {"classifier_config": {"activation": "relu", "alpha": 0.0001, "batch_size": "auto", "beta_1": 0.9, "beta_2": 0.999, "early_stopping": false, "epsilon": 1e-08, "hidden_layer_sizes": [100], "learning_rate": "constant", "learning_rate_init": 0.001, "max_fun": 15000, "max_iter": 200, "momentum": 0.9, "n_iter_no_change": 10, "nesterovs_momentum": true, "power_t": 0.5, "random_state": 0, "shuffle": true, "solver": "adam", "tol": 0.0001, "validation_fraction": 0.1, "verbose": false, "warm_start": false}, "test/accuracy": 0.6776814734561214, "test/f1_macro": 0.6741581804439568, "test/f1_micro": 0.6776814734561214, "test/p_macro": 0.6754910947059006, "test/p_micro": 0.6776814734561214, "test/r_macro": 0.6746903024714322, "test/r_micro": 0.6776814734561214}, "lexical_relation_classification/K&H+N": {"classifier_config": {"activation": "relu", "alpha": 0.0001, "batch_size": "auto", "beta_1": 0.9, "beta_2": 0.999, "early_stopping": false, "epsilon": 1e-08, "hidden_layer_sizes": [100], "learning_rate": "constant", "learning_rate_init": 0.001, "max_fun": 15000, "max_iter": 200, "momentum": 0.9, "n_iter_no_change": 10, "nesterovs_momentum": true, "power_t": 0.5, "random_state": 0, "shuffle": true, "solver": "adam", "tol": 0.0001, "validation_fraction": 0.1, "verbose": false, "warm_start": false}, "test/accuracy": 0.9545106767754051, "test/f1_macro": 0.8794140203700929, "test/f1_micro": 0.9545106767754051, "test/p_macro": 0.8962382780232659, "test/p_micro": 0.9545106767754051, "test/r_macro": 0.8644738808254389, "test/r_micro": 0.9545106767754051}, "lexical_relation_classification/ROOT09": {"classifier_config": {"activation": "relu", "alpha": 0.0001, "batch_size": "auto", "beta_1": 0.9, "beta_2": 0.999, "early_stopping": false, "epsilon": 1e-08, "hidden_layer_sizes": [100], "learning_rate": "constant", "learning_rate_init": 0.001, "max_fun": 15000, "max_iter": 200, "momentum": 0.9, "n_iter_no_change": 10, "nesterovs_momentum": true, "power_t": 0.5, "random_state": 0, "shuffle": true, "solver": "adam", "tol": 0.0001, "validation_fraction": 0.1, "verbose": false, "warm_start": false}, "test/accuracy": 0.8937637104356001, "test/f1_macro": 0.8889590618516027, "test/f1_micro": 0.8937637104356001, "test/p_macro": 0.8914164207184526, "test/p_micro": 0.8937637104356001, "test/r_macro": 0.8880384900425148, "test/r_micro": 0.8937637104356001}}
config.json ADDED
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+ {
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+ "_name_or_path": "roberta-large",
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+ "template": "I wasn\u2019t aware of this relationship, but I just read in the encyclopedia that <obj> is <subj>\u2019s <mask>"
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+ },
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+ "torch_dtype": "float32",
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+ "transformers_version": "4.26.1",
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+ "type_vocab_size": 1,
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+ "use_cache": true,
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+ "vocab_size": 50265
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+ }
finetuning_config.json ADDED
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+ {
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+ "template": "I wasn\u2019t aware of this relationship, but I just read in the encyclopedia that <obj> is <subj>\u2019s <mask>",
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+ "data": "relbert/relational_similarity",
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+ "data_name": "nell_relational_similarity.semeval2012_relational_similarity.t_rex_relational_similarity",
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+ "exclude_relation": null,
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+ "split_valid": "validation",
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+ "loss_function": "nce",
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+ "temperature": 0.05,
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+ "num_negative": 300,
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+ "num_positive": 10
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+ },
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+ "augment_negative_by_positive": false
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+ }
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relation_mapping.json ADDED
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special_tokens_map.json ADDED
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+ {
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+ "bos_token": "<s>",
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+ "cls_token": "<s>",
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+ "eos_token": "</s>",
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+ "mask_token": {
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+ "content": "<mask>",
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+ "lstrip": true,
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+ "normalized": false,
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+ "rstrip": false,
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+ "single_word": false
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+ },
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+ "pad_token": "<pad>",
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+ "sep_token": "</s>",
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+ "unk_token": "<unk>"
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+ }
tokenizer.json ADDED
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tokenizer_config.json ADDED
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+ {
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+ "add_prefix_space": false,
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+ "bos_token": "<s>",
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+ "cls_token": "<s>",
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+ "eos_token": "</s>",
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+ "errors": "replace",
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+ "mask_token": "<mask>",
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+ "model_max_length": 512,
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+ "name_or_path": "roberta-large",
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+ "pad_token": "<pad>",
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+ "sep_token": "</s>",
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+ "special_tokens_map_file": null,
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+ "tokenizer_class": "RobertaTokenizer",
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+ "trim_offsets": true,
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+ "unk_token": "<unk>"
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+ }
vocab.json ADDED
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