SOTAVerified

Entity Typing

Entity Typing is an important task in text analysis. Assigning types (e.g., person, location, organization) to mentions of entities in documents enables effective structured analysis of unstructured text corpora. The extracted type information can be used in a wide range of ways (e.g., serving as primitives for information extraction and knowledge base (KB) completion, and assisting question answering). Traditional Entity Typing systems focus on a small set of coarse types (typically fewer than 10). Recent studies work on a much larger set of fine-grained types which form a tree-structured hierarchy (e.g., actor as a subtype of artist, and artist is a subtype of person).

Source: Label Noise Reduction in Entity Typing by Heterogeneous Partial-Label Embedding

Image Credit: Label Noise Reduction in Entity Typing by Heterogeneous Partial-Label Embedding

Papers

Showing 76100 of 170 papers

TitleStatusHype
Fine-Grained Named Entity Typing over Distantly Supervised Data Based on Refined Representations0
FGNET-RH: Fine-Grained Named Entity Typing via Refinement in Hyperbolic Space0
Fine-grained Typing of Emerging Entities in Microblogs0
Finer Grained Entity Typing with TypeNet0
FINET: Context-Aware Fine-Grained Named Entity Typing0
How Can Cross-lingual Knowledge Contribute Better to Fine-Grained Entity Typing?0
Improving Distantly-supervised Entity Typing with Compact Latent Space Clustering0
Interpretable Entity Representations through Large-Scale Typing0
Knowledge-Aware Conversational Semantic Parsing Over Web Tables0
Label Embedding for Zero-shot Fine-grained Named Entity Typing0
Learning Entity Representations for Few-Shot Reconstruction of Wikipedia Categories0
Learning from Sibling Mentions with Scalable Graph Inference in Fine-Grained Entity Typing0
Learning to Learn and Predict: A Meta-Learning Approach for Multi-Label Classification0
LOME: Large Ontology Multilingual Extraction0
MLRIP: Pre-training a military language representation model with informative factual knowledge and professional knowledge base0
Multi-level Representations for Fine-Grained Typing of Knowledge Base Entities0
Multi-source named entity typing for social media0
MZET: Memory Augmented Zero-Shot Fine-grained Named Entity Typing0
Nested Named Entity Recognition as Latent Lexicalized Constituency Parsing0
Noise Mitigation for Neural Entity Typing and Relation Extraction0
Nonsymbolic Text Representation0
On the Importance of Subword Information for Morphological Tasks in Truly Low-Resource Languages0
Ontology Enrichment for Effective Fine-grained Entity Typing0
ORB: An Open Reading Benchmark for Comprehensive Evaluation of Machine Reading Comprehension0
Path-Based Attention Neural Model for Fine-Grained Entity Typing0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MLMETF178.2Unverified
2K-Adapter ( fac-adapter )F177.69Unverified
3K-Adapter ( fac-adapter + lin-adapter )F177.61Unverified
4ERNIEF175.56Unverified
5MCCE-B (replicated by Adaseq)F152.1Unverified
6Prompt + NPCRF (replicated by Adaseq)F150.1Unverified
7UniST-LargeF149.9Unverified
8Prompt Learning (replicated by Adaseq))F149.3Unverified
9MLMETF149.1Unverified
10RoBERTa-Large + NPCRF (replicated by Adaseq)F147.3Unverified
#ModelMetricClaimedVerifiedStatus
1MLMETF149.1Unverified
2ELMo (distant denoising data)F140.2Unverified
3LabelGCN Xiong et al. (2019)F136.9Unverified
4Choi et al. (2018) w augmentationF132Unverified
#ModelMetricClaimedVerifiedStatus
1REXELAvg F196.01Unverified
2REXELAvg F190.93Unverified
3REXELAvg F186.74Unverified
#ModelMetricClaimedVerifiedStatus
1ReFinEDMicro-F184Unverified
#ModelMetricClaimedVerifiedStatus
1LITEMacro F180.1Unverified
#ModelMetricClaimedVerifiedStatus
1TextEnt-fullAccuracy37.4Unverified
#ModelMetricClaimedVerifiedStatus
1LITEMacro F186.6Unverified