The wealth of structured (e.g. Wikidata) and unstructured data about the world available today presents an incredible opportunity for tomorrow's Artificial Intelligence. So far, integration of these two different modalities is a difficult process, involving many decisions concerning how best to represent the information so that it will be captured or useful, and hand-labeling large amounts of data.DeepType overcomes this challenge by explicitly integrating symbolic information into the reasoning process of a neural network with a type system.First we construct a type system, and second, we use it to constrain the outputs of a neural network to respect the symbolic structure. We achieve this by reformulating the design problem into a mixed i...
Knowledge bases (KBs) are paramount in NLP. We employ multiview learning for increasing accuracy and...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
This paper faces the problem of extracting knowledge from raw text. We present a deep architecture i...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
Named Entity Typing (NET) is valuable for many natural language processing tasks, such as relation e...
We argue that the field of neural-symbolic integra-tion is in need of identifying application scenar...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis w...
Entity Linking, a vital component of Natural Language Processing (NLP), aims to link named entities ...
Entity matching is the problem of identifying which records refer to the same real-world entity. It ...
We present a novel architecture In-Database Entity Linking (IDEL), in which we integrate the analyti...
Despite the recent remarkable advances in deep learning, we are still far from building machines wit...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
Knowledge bases (KBs) are paramount in NLP. We employ multiview learning for increasing accuracy and...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
This paper faces the problem of extracting knowledge from raw text. We present a deep architecture i...
Across multiple domains from computer vision to speech recognition, machine learning models have bee...
Master's thesis in Computer ScienceKnowledge bases contain vast amounts of information about entitie...
Neural entity linking models are very powerful, but run the risk of overfitting to the domain they a...
Named Entity Typing (NET) is valuable for many natural language processing tasks, such as relation e...
We argue that the field of neural-symbolic integra-tion is in need of identifying application scenar...
Our research focuses on three sub-tasks of entity analysis: fine-grained entity typing (FGET), entit...
Entity matching (EM) finds data instances that refer to the same real-world entity. In this thesis w...
Entity Linking, a vital component of Natural Language Processing (NLP), aims to link named entities ...
Entity matching is the problem of identifying which records refer to the same real-world entity. It ...
We present a novel architecture In-Database Entity Linking (IDEL), in which we integrate the analyti...
Despite the recent remarkable advances in deep learning, we are still far from building machines wit...
The impact of Deep Learning is due to the ability of its algorithm to mimic purely instinctive decis...
Knowledge bases (KBs) are paramount in NLP. We employ multiview learning for increasing accuracy and...
Fine-grained entity typing aims to identify the semantic type of an entity in a particular plain tex...
This paper faces the problem of extracting knowledge from raw text. We present a deep architecture i...