Automatic extraction and processing of document references
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9783640723164 - Automatic extraction and processing of document references

Automatic extraction and processing of document references (2010)

Lieferung erfolgt aus/von: Deutschland ~EN PB NW

ISBN: 9783640723164 bzw. 3640723163, vermutlich in Englisch, GRIN Publishing, Taschenbuch, neu.

Lieferung aus: Deutschland, Lieferbar in 2 - 3 Tage.
Master's Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typical example of such a 'knowledge net' providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents that the current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documents stored in a company's document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of links to documents that the current document refers to. As information about how the documents in this system are interrelated was not available, the focus of the project underlying this thesis was on the first step towards solving this task: automatically analyzing documents in order to extract names of related documents. Once all document names mentioned in a document have been extracted, the next step would then be to search for these documents in the system's database and, in case they have been successfully found, create links to the respective documents. The outcome of the project was a system that performs the extraction task. It is based on Conditional Random Fields, a machine learning technique introduced by Lafferty et al. (2001), and is able to extract document names from unseen documents, achieving high precision scores (88%) and acceptable recall scores (65%) on a test dataset. The implementation is based on a Java package provided by Sarawagi & Cohen (2005), which was adapted and extended to suit the nature of the task. As the approach is based on supervised learning, the project also involved the generation of appropriate training data. Taschenbuch, 25.10.2010.
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9783640723164 - Kathrin Eichler: Automatic extraction and processing of document references
Kathrin Eichler

Automatic extraction and processing of document references (2010)

Lieferung erfolgt aus/von: Deutschland DE PB NW

ISBN: 9783640723164 bzw. 3640723163, in Deutsch, GRIN Publishing, Taschenbuch, neu.

Lieferung aus: Deutschland, Versandfertig in 2 - 3 Tagen.
A CRF-based approach Master´s Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typical example of such a ´´knowledge net´´ providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents that the current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documents stored in a company´s document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of links to documents that the current document refers to. As information about how the documents in this system are interrelated was not available, the focus of the project underlying this thesis was on the first step towards solving this task: automatically analyzing documents in order to extract names of related documents. Once all document names mentioned in a document have been extracted, the next step would then be to search for these documents in the system´s database and, in case they have been successfully found, create links to the respective documents. The outcome of the project was a system that performs the extraction task. It is based on Conditional Random Fields, a machine learning technique introduced by Lafferty et al. (2001), and is able to extract document names from unseen documents, achieving high precision scores (88%) and acceptable recall scores (65%) on a test dataset. The implementation is based on a Java package provided by Sarawagi & Cohen (2005), which was adapted and extended to suit the nature of the task. As the approach is based on supervised learning, the project also involved the generation of appropriate training data. 25.10.2010, Taschenbuch.
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9783640723164 - Kathrin Eichler: Automatic extraction and processing of document references
Symbolbild
Kathrin Eichler

Automatic extraction and processing of document references (2010)

Lieferung erfolgt aus/von: Deutschland DE PB NW RP

ISBN: 9783640723164 bzw. 3640723163, in Deutsch, Grin Verlag Okt 2010, Taschenbuch, neu, Nachdruck.

39,99 + Versand: 15,50 = 55,49
unverbindlich
Von Händler/Antiquariat, AHA-BUCH GmbH [51283250], Einbeck, Germany.
This item is printed on demand - Print on Demand Titel. - Master's Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typicalexample of such a knowledge net providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents thatthe current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documentsstored in a company s document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of links to documents that the current document refers to. As information about how the documents in this system are interrelated was not available,the focus of the project underlying this thesis was on the first step towards solving this task: automatically analyzing documents in order to extract names of related documents. Once all document names mentioned in a document have been extracted, the next step would then be to search for these documents in the system s database and, in case they have been successfully found, create links to the respective documents.The outcome of the project was a system that performs the extraction task. It is based on Conditional Random Fields, a machine learning technique introduced by Lafferty et al. (2001), and is able to extract document names from unseen documents, achieving high precision scores (88%) and acceptable recall scores (65%) on a test dataset.The implementation is based on a Java package provided by Sarawagi & Cohen (2005), which was adapted and extended to suit the nature of the task. As the approach is based on supervised learning, the project also involved the generation of appropriate trainingdata. 76 pp. Englisch.
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9783640723164 - Eichler, Kathrin: Automatic extraction and processing of document references
Eichler, Kathrin

Automatic extraction and processing of document references

Lieferung erfolgt aus/von: Deutschland DE PB NW

ISBN: 9783640723164 bzw. 3640723163, in Deutsch, Grin Verlag, Taschenbuch, neu.

Lieferung aus: Deutschland, Versandkostenfrei.
buecher.de GmbH & Co. KG, [1].
Master's Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, comment: Für die Arbeit wurde die Bewertung "with distinction" vergeben. , abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typicalexample of such a "knowledge net" providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents thatthe current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documentsstored in a company's document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of links to documents that the current document refers to. As information about how the documents in this system are interrelated was not available,the focus of the project underlying this thesis was on the first step towards solving this task: automatically analyzing documents in order to extract names of related documents. Once all document names mentioned in a document have been extracted, the next step would then be to search for these documents in the system's database and, in case they have been successfully found, create links to the respective documents.The outcome of the project was a system that performs the extraction task. It is based on Conditional Random Fields, a machine learning technique introduced by Lafferty et al. (2001), and is able to extract document names from unseen documents, achieving high precision scores (88%) and acceptable recall scores (65%) on a test dataset.The implementation is based on a Java package provided by Sarawagi & Cohen (2005), which was adapted and extended to suit the nature of the task. As the approach is based on supervised learning, the project also involved the generation of appropriate trainingdata.2010. 72 S. 210 mmVersandfertig in 3-5 Tagen, Softcover.
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9783640723164 - Kathrin Eichler: Automatic Extraction and Processing of Document References (Paperback)
Symbolbild
Kathrin Eichler

Automatic Extraction and Processing of Document References (Paperback) (2013)

Lieferung erfolgt aus/von: Deutschland DE PB NW RP

ISBN: 9783640723164 bzw. 3640723163, in Deutsch, GRIN Verlag, Germany, Taschenbuch, neu, Nachdruck.

Lieferung aus: Deutschland, Versandkostenfrei.
Von Händler/Antiquariat, The Book Depository EURO [60485773], Slough, United Kingdom.
Language: English Brand New Book ***** Print on Demand *****.Master s Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, comment: Fur die Arbeit wurde die Bewertung with distinction vergeben., abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typical example of such a knowledge net providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents that the current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documents stored in a company s document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of links to documents that the current document refers to. As information about how the documents in this system are interrelated was not available, the focus of the project underlying this thesis was on the first step towards solving this task: automatically analyzing documents in order to extract names of related documents. Once all document names mentioned in a document have been extracted, the next step would then be to search for these.
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9783640723164 - Kathrin Eichler: Automatic extraction and processing of document references
Kathrin Eichler

Automatic extraction and processing of document references (2007)

Lieferung erfolgt aus/von: Russische Föderation ~EN NW

ISBN: 9783640723164 bzw. 3640723163, vermutlich in Englisch, 72 Seiten, Grin-Verlag, München, Deutschland, neu.

104.901,84 (UAH 3.942)¹
unverbindlich
Lieferung aus: Russische Föderation, zzgl. Versandkosten.
Master& 39;s Thesis from the year 2007 in the subject Computer Science - Applied, grade: 1.0, University of Sunderland (School of Computing and Technology), language: English, abstract: While reading documents, you often encounter text passages advising you to refer to other documents for more information about a specific topic. These references to other documents are particularly common in technical documents, written for the sole purpose of providing the reader with as much relevant information as possible, without rephrasing information that can be found elsewhere. Knowing how the documents in a system are interrelated, i.e. which other documents a document refers to or is referred by, can be extremely helpful when trying to get access to relevant information. A typicalexample of such a& 34;knowledge net& 34; providing information about document relations is CiteSeer, a digital library of academic literature. For each document in the library system, CiteSeer displays lists of related documents, such as a list of documents thatthe current document cites as well as a list of documents that the current document is cited by. The assumption that inspired this thesis is that such lists are not only helpful when reading academic literature but could also assist a reader of technical documentsstored in a company& 39;s document management system. The idea was thus to extend an existing document management system by displaying, for each document stored in the system, a list of link... Книги/Наука и образование/Технические науки/Информатика, вычислительная техника/Информационные технологии, 148x210 мм, book.
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3640723163 - Kathrin Eichler: Automatic extraction and processing of document references
Kathrin Eichler

Automatic extraction and processing of document references

Lieferung erfolgt aus/von: Deutschland ~EN PB NW

ISBN: 3640723163 bzw. 9783640723164, vermutlich in Englisch, 3. Ausgabe, GRIN Publishing, Taschenbuch, neu.

19,99 + Versand: 7,50 = 27,49
unverbindlich
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
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9783640723164 - Eichler, Kathrin: Automatic extraction and processing of document references
Eichler, Kathrin

Automatic extraction and processing of document references (2010)

Lieferung erfolgt aus/von: Deutschland ~EN PB NW

ISBN: 9783640723164 bzw. 3640723163, vermutlich in Englisch, 3. Ausgabe, Grin-Verlag, München, Deutschland, Taschenbuch, neu.

Lieferung aus: Deutschland, Next Day, Versandkostenfrei.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
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