Information extraction (IE) is the problem of constructing a knowledge base from a corpus of text documents. In this paper, we argue that firstorder probabilistic models (FOPMs) are a promising framework for IE, for two main reasons. First, FOPMs allow us to reason explicitly about entites that are mentioned in multiple documents, and compute the probability that two strings refer to the same entity --- thus addressing the problem of coreference or record linkage in a principled way
In data integration we transform information from a source into a target schema. A general problem i...
This paper reports on theoretical investigations about the assumptions underlying the inverse docume...
Retrieval models are the core components of information retrieval systems, which guide the document ...
ABSTRACT Traditional information extraction (IE) tasks roughly consist of named-entity recognition, ...
Certain applications require that the out-put of an information extraction system be probabilistic, ...
I present three well-known probabilistic models of information retrieval in tutorial style: The bina...
91 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.There has been a long standing...
Based on these observations and analysis, we propose a joint discriminative probabilistic framework...
Summarization: Unstructured text represents a large fraction of the world’s data. It often contains ...
Probabilistic Databases (PDBs) lie at the expressive intersection of databases, first-order logic, a...
AbstractUnsupervised Information Extraction (UIE) is the task of extracting knowledge from text with...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
This article introduces the idea that probabilistic reasoning (PR) may be understood as information ...
The paper provides an introduction to and survey of probabilistic approaches to modelling Informatio...
Summarization: Recently, there has been increasing interest in extending relational query processing...
In data integration we transform information from a source into a target schema. A general problem i...
This paper reports on theoretical investigations about the assumptions underlying the inverse docume...
Retrieval models are the core components of information retrieval systems, which guide the document ...
ABSTRACT Traditional information extraction (IE) tasks roughly consist of named-entity recognition, ...
Certain applications require that the out-put of an information extraction system be probabilistic, ...
I present three well-known probabilistic models of information retrieval in tutorial style: The bina...
91 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.There has been a long standing...
Based on these observations and analysis, we propose a joint discriminative probabilistic framework...
Summarization: Unstructured text represents a large fraction of the world’s data. It often contains ...
Probabilistic Databases (PDBs) lie at the expressive intersection of databases, first-order logic, a...
AbstractUnsupervised Information Extraction (UIE) is the task of extracting knowledge from text with...
This paper presents a new probabilistic model of information retrieval. The most important modeling ...
This article introduces the idea that probabilistic reasoning (PR) may be understood as information ...
The paper provides an introduction to and survey of probabilistic approaches to modelling Informatio...
Summarization: Recently, there has been increasing interest in extending relational query processing...
In data integration we transform information from a source into a target schema. A general problem i...
This paper reports on theoretical investigations about the assumptions underlying the inverse docume...
Retrieval models are the core components of information retrieval systems, which guide the document ...