This work studies the combination of a document retrieval and a relation extraction system for the purpose of identifying query-relevant relational facts. On the TREC Web collection, we assess extracted facts separately for correctness and relevance. Despite some TREC topics not being covered by the relation schema, we find that this approach reveals relevant facts, and in particular those not yet known in the knowledge base DBpedia. The study confirms that mention frequency, document relevance, and entity relevance are useful indicators for fact relevance. Still, the task remains an open research problem
Retrieving entities inside documents instead of documents or web pages themselves has become an acti...
Being able to find relevant information about prominent entities quickly is the main reason to use a...
Given a document collection, Document Retrieval is the task of returning the most relevant documents...
This work studies the combination of a document retrieval and a relation extraction system for the p...
This work studies the combination of a document retrieval and a relation extraction system for the p...
This work studies the combination of a document retrieval and a relation extraction system for the p...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
This study represents one attempt to make use of relations expressed in text to improve information ...
This paper presents a new task of predicting the coverage of a text document for relation extraction...
Retrieving entities inside documents instead of documents or web pages themselves has become an acti...
Being able to find relevant information about prominent entities quickly is the main reason to use a...
Given a document collection, Document Retrieval is the task of returning the most relevant documents...
This work studies the combination of a document retrieval and a relation extraction system for the p...
This work studies the combination of a document retrieval and a relation extraction system for the p...
This work studies the combination of a document retrieval and a relation extraction system for the p...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
Our goal in participating in the TREC 2009 Entity Track was to study whether relation extraction te...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
When humans explain complex topics, they naturally talk about involved entities, such as people, loc...
This study represents one attempt to make use of relations expressed in text to improve information ...
This paper presents a new task of predicting the coverage of a text document for relation extraction...
Retrieving entities inside documents instead of documents or web pages themselves has become an acti...
Being able to find relevant information about prominent entities quickly is the main reason to use a...
Given a document collection, Document Retrieval is the task of returning the most relevant documents...