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 10511075 of 1564 papers

TitleStatusHype
Label-anticipated Event Disentanglement for Audio-Visual Video Parsing0
Language-agnostic, automated assessment of listeners' speech recall using large language models0
Language-Independent Tokenisation Rivals Language-Specific Tokenisation for Word Similarity Prediction0
Language-Informed Transfer Learning for Embodied Household Activities0
Language Models Explain Word Reading Times Better Than Empirical Predictability0
Language Specific Knowledge: Do Models Know Better in X than in English?0
LanguaShrink: Reducing Token Overhead with Psycholinguistics0
Large Language Model Augmented Exercise Retrieval for Personalized Language Learning0
Large Language Models as Annotators: Enhancing Generalization of NLP Models at Minimal Cost0
Large Language Models as Topological Structure Enhancers for Text-Attributed Graphs0
Large Language Models for Automatic Milestone Detection in Group Discussions0
Large-scale evaluation of dependency-based DSMs: Are they worth the effort?0
Latent Feature Representation via Unsupervised Learning for Pattern Discovery in Massive Electron Microscopy Image Volumes0
Latent Space Embedding for Retrieval in Question-Answer Archives0
Latte-Mix: Measuring Sentence Semantic Similarity with Latent Categorical Mixtures0
Learning Analogy-Preserving Sentence Embeddings for Answer Selection0
Learning a Tree of Metrics with Disjoint Visual Features0
Learning Contextual Embeddings for Structural Semantic Similarity using Categorical Information0
Learning Distributional Token Representations from Visual Features0
Learning event representations for temporal segmentation of image sequences by dynamic graph embedding0
Learning from Pixel-Level Label Noise: A New Perspective for Semi-Supervised Semantic Segmentation0
Learning Geometry-aware Representations by Sketching0
Learning Graph Embeddings from WordNet-based Similarity Measures0
Learning Job Titles Similarity from Noisy Skill Labels0
Learning Large-scale Location Embedding From Human Mobility Trajectories with Graphs0
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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