Resource Description and Selection for Similarity Search in Metric Spaces
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Preise | Juni 16 | März 19 | Apr. 19 | Juni 19 | Okt. 19 |
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Schnitt | € 20,00 | € 20,00 | € 20,79 | € 20,00 | € 20,00 |
Nachfrage |
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| Resource Description and Selection for Similarity Search in Metric Spaces | Otto-Friedrich-Uni | 2015
~EN NW
ISBN: 9783863093105 bzw. 3863093100, vermutlich in Englisch, Otto-Friedrich-Uni, neu.
In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and "exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application "elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here.
2
| Resource Description and Selection for Similarity Search in Metric Spaces | Otto-Friedrich-Uni | 2015
~EN NW
ISBN: 9783863093105 bzw. 3863093100, vermutlich in Englisch, Otto-Friedrich-Uni, neu.
In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and "exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application "elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here.
3
Resource Description and Selection for Similarity Search in Metric Spaces
DE NW
ISBN: 9783863093105 bzw. 3863093100, in Deutsch, neu.
Lieferung aus: Vereinigtes Königreich Großbritannien und Nordirland, Lieferzeit: 11 Tage.
In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and "exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application "elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here.
In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and "exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application "elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here.
4
Resource Description and Selection for Similarity Search in Metric Spaces - Problems and Problem-Solving Approaches
~EN PB NW
ISBN: 9783863093105 bzw. 3863093100, vermutlich in Englisch, Otto-Friedrich-Uni, Taschenbuch, neu.
Lieferung aus: Deutschland, Versandkostenfrei.
Resource Description and Selection for Similarity Search in Metric Spaces: In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here. Englisch, Taschenbuch.
Resource Description and Selection for Similarity Search in Metric Spaces: In times of an ever increasing amount of data and a growing diversity of data types in different application contexts, there is a strong need for large-scale and exible indexing and search techniques. Metric access methods (MAMs) provide this flexibility, because they only assume that the dissimilarity between two data objects is modeled by a distance metric. Furthermore, scalable solutions can be built with the help of distributed MAMs. Both IF4MI and RS4MI, which are presented in this thesis, represent metric access methods. IF4MI belongs to the group of centralized MAMs. It is based on an inverted file and thus offers a hybrid access method providing text retrieval capabilities in addition to content-based search in arbitrary metric spaces. In opposition to IF4MI, RS4MI is a distributed MAM based on resource description and selection techniques. Here, data objects are physically distributed. However, RS4MI is by no means restricted to a certain type of distributed information retrieval system. Various application elds for the resource description and selection techniques are possible, for example in the context of visual analytics. Due to the metric space assumption, possible application fields go far beyond content-based image retrieval applications which provide the example scenario here. Englisch, Taschenbuch.
5
Resource Description and Selection for Similarity Search in Metric Spaces
~EN NW
ISBN: 3863093100 bzw. 9783863093105, vermutlich in Englisch, neu.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
6
Resource Description and Selection for Similarity Search in Metric Spaces
~EN PB NW
ISBN: 3863093100 bzw. 9783863093105, vermutlich in Englisch, Otto-Friedrich-Uni, Taschenbuch, neu.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
7
Resource Description (2015)
~EN PB NW
ISBN: 9783863093105 bzw. 3863093100, vermutlich in Englisch, Taschenbuch, neu.
Lieferung aus: Deutschland, Next Day, Versandkostenfrei.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
8
Resource Description and Selection for Similarity Search in Metric Spaces
DE NW
ISBN: 9783863093105 bzw. 3863093100, in Deutsch, neu.
Lieferung aus: Deutschland, Versandkosten, 3863093100.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
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