Neural entity linking models are very powerful, but run the risk of overfitting to the domain they are trained in. For this problem, a “domain” is characterized not just by genre of text but even by factors as specific as the particular distribution of entities, as neural models tend to overfit by memorizing properties of frequent entities in a dataset. We tackle the problem of building robust entity linking models that generalize effectively and do not rely on labeled entity linking data with a specific entity distribution. Rather than predicting entities directly, our approach models fine-grained entity properties, which can help disambiguate between even closely related entities. We derive a large inventory of types (tens of thousands) f...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
7th Workshop on Named Entities (NEWS) -- JUL 20, 2018 -- Melbourne, AUSTRALIAWOS:000538328900003Rece...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
Entity Linking is the task of matching a mention to an entity in a given knowledge base (KB). It con...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Recent research on entity linking (EL) has in-troduced a plethora of promising techniques, ranging f...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
Entity linking is an indispensable oper-ation of populating knowledge reposito-ries for information ...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
Existing state of the art neural entity linking models employ attention-based bag-of-words context m...
7th Workshop on Named Entities (NEWS) -- JUL 20, 2018 -- Melbourne, AUSTRALIAWOS:000538328900003Rece...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
In this study, I constructed a named-entity linking system that maps between contextual word embeddi...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
Entity Linking is the task of matching a mention to an entity in a given knowledge base (KB). It con...
Entity linking (also called entity disambiguation) aims to map the mentions in a given document to t...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Recent research on entity linking (EL) has in-troduced a plethora of promising techniques, ranging f...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
Entity linking is an indispensable oper-ation of populating knowledge reposito-ries for information ...
We present a joint model of three core tasks in the entity analysis stack: coreference res-olution (...
The intensive construction of domain-specific knowledge bases (DSKB) has posed an urgent demand for ...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...