1
Label Noise Reduction in Entity Typing by Heterogeneous Partial-Label Embedding
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Extracting Relations between Non-Standard Entities using Distant Supervision and Imitation Learning
3
ClusType: Effective Entity Recognition and Typing by Relation Phrase-Based Clustering
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Embedding Methods for Fine Grained Entity Type Classification
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Mining Quality Phrases from Massive Text Corpora
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Open Domain Question Answering via Semantic Enrichment
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Improved Relation Extraction with Feature-Rich Compositional Embedding Models
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LINE: Large-scale Information Network Embedding
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Context-Dependent Fine-Grained Entity Type Tagging
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Modeling Joint Entity and Relation Extraction with Table Representation
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Noisy Or-based model for Relation Extraction using Distant Supervision
12
Knowledge vault: a web-scale approach to probabilistic knowledge fusion
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Scalable Topical Phrase Mining from Text Corpora
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Incremental Joint Extraction of Entity Mentions and Relations
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Improved Pattern Learning for Bootstrapped Entity Extraction
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The Stanford CoreNLP Natural Language Processing Toolkit
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Knowledge base completion via search-based question answering
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DeepWalk: online learning of social representations
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Translating Embeddings for Modeling Multi-relational Data
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Joint inference of entities, relations, and coreference
21
Distributed Representations of Words and Phrases and their Compositionality
22
HYENA: Hierarchical Type Classification for Entity Names
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Fine-Grained Entity Recognition
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Multi-instance Multi-label Learning for Relation Extraction
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No Noun Phrase Left Behind: Detecting and Typing Unlinkable Entities
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DBpedia spotlight: shedding light on the web of documents
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Robust Disambiguation of Named Entities in Text
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Knowledge-Based Weak Supervision for Information Extraction of Overlapping Relations
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Learning from Partial Labels
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Modeling Relations and Their Mentions without Labeled Text
31
Exploiting Background Knowledge for Relation Extraction
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Distant supervision for relation extraction without labeled data
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Design Challenges and Misconceptions in Named Entity Recognition
35
Classification with partial labels
36
Freebase: a collaboratively created graph database for structuring human knowledge
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Finding the right facts in the crowd: factoid question answering over social media
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Learning to Extract Relations from the Web using Minimal Supervision
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1 Global Inference for Entity and Relation Identification via a Linear Programming Formulation
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Fine-grained named entity recognition and relation extraction for question answering
41
Pegasos: primal estimated sub-gradient solver for SVM
42
BioInfer: a corpus for information extraction in the biomedical domain
43
Subsequence Kernels for Relation Extraction
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Incorporating Non-local Information into Information Extraction Systems by Gibbs Sampling
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Exploring Various Knowledge in Relation Extraction
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Dependency Tree Kernels for Relation Extraction
47
Web-scale information extraction in knowitall: (preliminary results)
48
Locality Preserving Projections
49
Representing Text for Joint Embedding of Text and Knowledge Bases
50
Mining for unambiguous instances to adapt part-of-speech taggers to new domains
51
A Word Embedding Approach to Predicting the Compositionality of Multiword Expressions
52
Fine-grained Semantic Typing of Emerging Entities
53
Filling Knowledge Base Gaps for Distant Supervision of Relation Extraction
54
Linguistic Resources for 2013 Knowledge Base Population Evaluations
55
A survey of named entity recognition and classification
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A Review of Relation Extraction
58
Run POS-constrained text segmentation algorithm on POS-tagged corpus D using positive examples obtained from KB, to detect candidate entity mentions M (Sec. 3.1)
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A joint embedding objective is formulated that models mention-type association, mention-feature co-occurrence, entity-relation cross-constraints in a noise-robust way.
60
Generate candidate relation mentions Z from M , extract text features for each relation mention z ∈ Z and their entity mention argument (Sec. 3.1)
61
A novel distant-supervision framework, C O T YPE , is proposed to extract typed entities and relations in domain-specific corpora with minimal linguistic assumption. (Fig. 2.)
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A domain-agnostic text segmentation algorithm is developed to detect entity mentions using distant supervision
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Jointly embed relation and entity mentions, text features, and type labels into two low-dimensional spaces (for entities and relations, respectively) where