SOTAVerified

Semantic Similarity

The main objective Semantic Similarity is to measure the distance between the semantic meanings of a pair of words, phrases, sentences, or documents. For example, the word “car” is more similar to “bus” than it is to “cat”. The two main approaches to measuring Semantic Similarity are knowledge-based approaches and corpus-based, distributional methods.

Source: Visual and Semantic Knowledge Transfer for Large Scale Semi-supervised Object Detection

Papers

Showing 901925 of 1564 papers

TitleStatusHype
Uncertainty-based Visual Question Answering: Estimating Semantic Inconsistency between Image and Knowledge Base0
Uncertainty-based Visual Question Answering: Estimating Semantic Inconsistency between Image and Knowledge Base0
Uncertainty Quantification of Large Language Models through Multi-Dimensional Responses0
UnClE: Explicitly Leveraging Semantic Similarity to Reduce the Parameters of Word Embeddings0
Uncovering Semantics and Topics Utilized by Threat Actors to Deliver Malicious Attachments and URLs0
UniAdapt: A Universal Adapter for Knowledge Calibration0
Unifying Demonstration Selection and Compression for In-Context Learning0
Unifying Specialist Image Embedding into Universal Image Embedding0
UniMelb at SemEval-2018 Task 12: Generative Implication using LSTMs, Siamese Networks and Semantic Representations with Synonym Fuzzing0
Universal Correspondence Network0
Universal Features Guided Zero-Shot Category-Level Object Pose Estimation0
Universal Multimodal Representation for Language Understanding0
Universal Text Representation from BERT: An Empirical Study0
Unleashing the power of text for credit default prediction: Comparing human-written and generative AI-refined texts0
Unsupervised Anomaly Detection From Semantic Similarity Scores0
Unsupervised Contextual Paraphrase Generation using Lexical Control and Reinforcement Learning0
Unsupervised Dialogue Topic Segmentation with Topic-aware Utterance Representation0
Unsupervised Features Extraction for Binary Similarity Using Graph Embedding Neural Networks0
Unsupervised Flow Discovery from Task-oriented Dialogues0
Unsupervised Full Constituency Parsing with Neighboring Distribution Divergence0
Unsupervised Paraphrasing by Simulated Annealing0
Unsupervised Paraphrasing via Deep Reinforcement Learning0
Unsupervised Text Summarization of Long Documents using Dependency-based Noun Phrases and Contextual Order Arrangement0
Unveiling Ontological Commitment in Multi-Modal Foundation Models0
Unveiling Safety Vulnerabilities of Large Language Models0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1BioBERT (pre-trained on PubMed abstracts + PMC, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, expanded corpus")F193.38Unverified
2SciBERT uncased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, expanded corpus")F191.51Unverified
3SciBERT cased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, expanded corpus")F190.69Unverified
4BERT-Base uncased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, expanded corpus")F189.16Unverified
5BERT-Base cased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, expanded corpus")F189.12Unverified
#ModelMetricClaimedVerifiedStatus
1BioBERT (pre-trained on PubMed abstracts + PMC, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")F189.75Unverified
2SciBERT cased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")F189.3Unverified
3SciBERT uncased (SciVocab, fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")F189.3Unverified
4BERT-Base uncased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")F186.8Unverified
5BERT-Base cased (fine-tuned on "Annotated corpus for semantic similarity of clinical trial outcomes, original corpus")F184.21Unverified
#ModelMetricClaimedVerifiedStatus
1Doc2VecCMSE0.31Unverified
2LSTM (Tai et al., 2015)MSE0.28Unverified
3Bidirectional LSTM (Tai et al., 2015)MSE0.27Unverified
4combine-skip (Kiros et al., 2015)MSE0.27Unverified
5Dependency Tree-LSTM (Tai et al., 2015)MSE0.25Unverified
#ModelMetricClaimedVerifiedStatus
1BioLinkBERT (large)Pearson Correlation0.94Unverified
2BioLinkBERT (base)Pearson Correlation0.93Unverified
3NCBI_BERT(base) (P+M)Pearson Correlation0.92Unverified
#ModelMetricClaimedVerifiedStatus
1MacBERT-largeMacro F185.6Unverified
#ModelMetricClaimedVerifiedStatus
1CharacterBERT (base, medical, ensemble)Pearson Correlation85.62Unverified
#ModelMetricClaimedVerifiedStatus
1NCBI_BERT(base) (P+M)Pearson Correlation0.85Unverified