Information extraction (IE) plays a significant role in automating the knowledge acquisition process from unstructured or semi-structured textual sources. Named entity recognition and relation extraction are the major tasks of IE discussed in this thesis. Traditional IE systems rely on high-quality datasets of large scale to learn the semantic and structural relationship between the observations and labels while such datasets are rare especially in the area of low-resource language processing (e.g. figurative language processing and clinical narrative curation). This leads to the problems of inadequate supervision and model over-fitting. In this thesis, we work on the low-resource IE algorithms and applications. We believe incorporating the...
Journal ArticleWe present an information extraction system that decouples the tasks of finding relev...
The rapid growth of online texts call for systems that can extract relevant information. Many inform...
Knowledge-based natural language processing systems have achieved good success with many tasks, but ...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
The explosion of data has made it crucial to analyze the data and distill important information effe...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
Social media content represents a large portion of all textual content appearing on the Internet. Th...
Social media content represents a large portion of all textual content appearing on the Internet. Th...
Open Information Extraction (OIE) systems focus on identifying and extracting general relations from...
Ambiguity, complexity, and diversity in natural language textual expressions are major hindrances to...
There is an abundance of information being generated constantly, most of it encoded as unstructured ...
116 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.The dissertation presents a n...
Human language records most of the information and knowledge produced by organizations and individua...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
Journal ArticleWe present an information extraction system that decouples the tasks of finding relev...
The rapid growth of online texts call for systems that can extract relevant information. Many inform...
Knowledge-based natural language processing systems have achieved good success with many tasks, but ...
This thesis explores information extraction (IE) in \textit{low-resource} conditions, in which the q...
The explosion of data has made it crucial to analyze the data and distill important information effe...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
Social media content represents a large portion of all textual content appearing on the Internet. Th...
Social media content represents a large portion of all textual content appearing on the Internet. Th...
Open Information Extraction (OIE) systems focus on identifying and extracting general relations from...
Ambiguity, complexity, and diversity in natural language textual expressions are major hindrances to...
There is an abundance of information being generated constantly, most of it encoded as unstructured ...
116 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2003.The dissertation presents a n...
Human language records most of the information and knowledge produced by organizations and individua...
Various tasks in natural language processing (NLP) suffer from lack of labelled training data, which...
Journal ArticleWe present an information extraction system that decouples the tasks of finding relev...
The rapid growth of online texts call for systems that can extract relevant information. Many inform...
Knowledge-based natural language processing systems have achieved good success with many tasks, but ...