Across multiple domains from computer vision to speech recognition, machine learning models have been shown to match or outperform human experts at recognition tasks. We lack such a comparison point for Entity Linking. We construct a human benchmark on two standard datasets (TAC KBP 2010 and AIDA (YAGO)) to measure human accuracy. We find that current systems still fall short of human performance. We present DeepType 2, a novel entity linking system that closes the gap. Our proposed approach overcomes shortcomings of previous type-based entity linking systems, and does not use pre-trained language models to reach this level. Three key innovations are responsible for DeepType 2's performance: 1) an abstracted representation of entities th...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
Many recent works on Entity Resolution (ER) leverage Deep Learning techniques involving language mod...
Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis w...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
The wealth of structured (e.g. Wikidata) and unstructured data about the world available today prese...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained Entity Recognition (FgER) is the task of detecting and classifying entity mentions into...
The entity typing task aims at predicting one or more words or phrases that describe the type(s) of ...
In recent years, enormous progress has been made in the field of Artificial Intelligence (AI). Espec...
Thesis (Ph.D.)--University of Washington, 2015-12With the advent of the Web, textual information has...
Nowadays, data integration must often manage noisy data, also containing attribute values written in...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
Many recent works on Entity Resolution (ER) leverage Deep Learning techniques involving language mod...
Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis w...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
The wealth of structured (e.g. Wikidata) and unstructured data about the world available today prese...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained Entity Recognition (FgER) is the task of detecting and classifying entity mentions into...
The entity typing task aims at predicting one or more words or phrases that describe the type(s) of ...
In recent years, enormous progress has been made in the field of Artificial Intelligence (AI). Espec...
Thesis (Ph.D.)--University of Washington, 2015-12With the advent of the Web, textual information has...
Nowadays, data integration must often manage noisy data, also containing attribute values written in...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
Many recent works on Entity Resolution (ER) leverage Deep Learning techniques involving language mod...
Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis w...