We propose a new class of methods for learning vector space embeddings of entities. While most existing methods focus on modelling similarity, our primary aim is to learn embeddings that are interpretable, in the sense that query terms have a direct geometric representation in the vector space. Intuitively, we want all entities that have some property (i.e. for which a given term is relevant) to be located in some well-defined region of the space. This is achieved by imposing max-margin constraints that are derived from a bagof-words representation of the entities. The resulting vector spaces provide us with a natural vehicle for identifying entities that have a given property (or ranking them according to how much they have the ...
The goal of this work is to leverage cross-document entity relationships for improved understanding ...
The immense scale of the Web has rendered itself as a huge repository storing information about vari...
We investigate the problem of entity ranking towards descriptive queries, that aims to match entitie...
We propose a new class of methods for learning vector space embeddings of entities. While most exis...
An entity embedding is a vector space representation of entities in which similar entities have simi...
Fang, HuiIn the past decade, the prosperity of the World Wide Web has led to fast explosion of info...
Entity retrieval is the problem of finding information about a given real-world entity (e.g., direct...
Entities are at the center of how we represent and aggregate knowledge. For instance, Encyclopedias ...
As the Web has evolved into a data-rich repository, with the standard "page view," current search en...
In the vector space model for information retrieval, term vectors are pair-wise orthogonal, that is,...
The present disclosure describes an embedding explorer that allows a user to interactively explore p...
We study the problem of linking the terms of a web-search query to a semantic representation given b...
A substantial fraction of web search queries contain references to entities, such as persons, organi...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
Entities are a central element of knowledge bases and are important input to many knowledge-centric ...
The goal of this work is to leverage cross-document entity relationships for improved understanding ...
The immense scale of the Web has rendered itself as a huge repository storing information about vari...
We investigate the problem of entity ranking towards descriptive queries, that aims to match entitie...
We propose a new class of methods for learning vector space embeddings of entities. While most exis...
An entity embedding is a vector space representation of entities in which similar entities have simi...
Fang, HuiIn the past decade, the prosperity of the World Wide Web has led to fast explosion of info...
Entity retrieval is the problem of finding information about a given real-world entity (e.g., direct...
Entities are at the center of how we represent and aggregate knowledge. For instance, Encyclopedias ...
As the Web has evolved into a data-rich repository, with the standard "page view," current search en...
In the vector space model for information retrieval, term vectors are pair-wise orthogonal, that is,...
The present disclosure describes an embedding explorer that allows a user to interactively explore p...
We study the problem of linking the terms of a web-search query to a semantic representation given b...
A substantial fraction of web search queries contain references to entities, such as persons, organi...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
Entities are a central element of knowledge bases and are important input to many knowledge-centric ...
The goal of this work is to leverage cross-document entity relationships for improved understanding ...
The immense scale of the Web has rendered itself as a huge repository storing information about vari...
We investigate the problem of entity ranking towards descriptive queries, that aims to match entitie...