An Incrementally Trainable Statistical Approach to Information Extraction: Based on Token Classification and Rich Context Model - Christian Siefkes - Boeken - VDM Verlag - 9783639001464 - 4 juli 2008
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An Incrementally Trainable Statistical Approach to Information Extraction: Based on Token Classification and Rich Context Model

Christian Siefkes

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An Incrementally Trainable Statistical Approach to Information Extraction: Based on Token Classification and Rich Context Model

Most of the information stored in digital form is hidden in naturallanguage texts. The purpose of Information Extraction (IE) is to finddesired pieces of information in unstructured or weakly structured textsand store them in a form that is suitable for automatic querying andprocessing. This book presents a innovative approach to statistical informationextraction. It introduces a new algorithm which supports functionality notavailable in previous IE systems, such as interactive incremental trainingto reduce the human training effort. The system also utilizes new sourcesof information, employing rich tree-based context representations tocombine document structure (HTML or XML markup) with linguistic andsemantic information. The resulting IE system is designed as a generic framework for statisticalinformation extraction. All core components can be modified or exchangedindependently of each other. This book is of interest for professionals who have to deal with largeamounts of weakly structured information and seek ways to automate thisprocess, as well as for researchers and practitioners active in the fieldsof text mining and text classification.

Media Boeken     Paperback Book   (Boek met zachte kaft en gelijmde rug)
Vrijgegeven 4 juli 2008
ISBN13 9783639001464
Uitgevers VDM Verlag
Pagina's 220
Afmetingen 299 g
Taal en grammatica Engels  

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