This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive data. While most approaches to Relation Extraction are only evaluated on newspaper data dealing with general relations from the business world their applicability to other data sets is not well studied. Part I of this thesis deals with theoretical foundations of Information Extraction algorithms. Text mining cannot be seen as the simple application of data mining methods to textual data. Instead, sophisticated methods have to be employed to accurately extract knowledge from text which then can be mined using statistical methods from the field of data mining. Information Extraction itself can be divided into two subtasks: Entity Detection and ...
Text analytics in the business domain is a growing field in research and practical applications. We ...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
Abstract. This thesis examines the use of machine learning techniques in various tasks of natural la...
This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive d...
In recent years the amount of unstructured data stored on the Internet and other digital sources has...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Relation extraction is a subtask of information extraction where semantic relationships are extract...
We present an approach for extracting relations between named entities from natural language documen...
textInformation Extraction, the task of locating textual mentions of specific types of entities and ...
textInformation Extraction, the task of locating textual mentions of specific types of entities and ...
Abstract Information extraction is the task of finding structured information from unstructured or s...
Information and knowledge extraction from natural language text is a key asset for question answerin...
Relation extraction has been considered as one of the most popular topics nowadays, thanks for its c...
Being able to find relevant information about prominent entities quickly is the main reason to use a...
Documents on the Internet are composed of several kinds of multimedia information when accessed for ...
Text analytics in the business domain is a growing field in research and practical applications. We ...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
Abstract. This thesis examines the use of machine learning techniques in various tasks of natural la...
This thesis aims to develop a Relation Extraction algorithm to extract knowledge out of automotive d...
In recent years the amount of unstructured data stored on the Internet and other digital sources has...
Information Extraction (IE) aims at mapping texts into fixed structure representing the key informat...
Relation extraction is a subtask of information extraction where semantic relationships are extract...
We present an approach for extracting relations between named entities from natural language documen...
textInformation Extraction, the task of locating textual mentions of specific types of entities and ...
textInformation Extraction, the task of locating textual mentions of specific types of entities and ...
Abstract Information extraction is the task of finding structured information from unstructured or s...
Information and knowledge extraction from natural language text is a key asset for question answerin...
Relation extraction has been considered as one of the most popular topics nowadays, thanks for its c...
Being able to find relevant information about prominent entities quickly is the main reason to use a...
Documents on the Internet are composed of several kinds of multimedia information when accessed for ...
Text analytics in the business domain is a growing field in research and practical applications. We ...
A thesis submitted in partial fulfilment of the requirements of the University of Wolverhampton for ...
Abstract. This thesis examines the use of machine learning techniques in various tasks of natural la...