HyperAI

Sentence Embeddings For Biomedical Texts On 3

Metrics

F1
Precision
Recall

Results

Performance results of various models on this benchmark

Model Name
F1
Precision
Recall
Paper TitleRepository
BERT-Base uncased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")86.885.7688.15Measuring semantic similarity of clinical trial outcomes using deep pre-trained language representations-
BioBERT (pre-trained on PubMed abstracts + PMC, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")89.7588.9390.76Measuring semantic similarity of clinical trial outcomes using deep pre-trained language representations-
SciBERT cased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")89.387.3191.53Measuring semantic similarity of clinical trial outcomes using deep pre-trained language representations-
BERT-Base cased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")84.2183.3685.2Measuring semantic similarity of clinical trial outcomes using deep pre-trained language representations-
SciBERT uncased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")89.387.9990.78Measuring semantic similarity of clinical trial outcomes using deep pre-trained language representations-
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