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Using Additional Information in Streaming Algorithms100%: Raffael Buff: Using Additional Information in Streaming Algorithms (ISBN: 9783961165421) 2016, Diplom.De Okt 2016, in Englisch.
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Using Additional Information in Streaming Algorithms100%: Raffael Buff: Using Additional Information in Streaming Algorithms (ISBN: 9783960675945) 2016, Erstausgabe, in Deutsch, Taschenbuch.
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Using Additional Information in Streaming Algorithms
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9783961165421 - Raffael Buff: Using Additional Information in Streaming Algorithms
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Raffael Buff

Using Additional Information in Streaming Algorithms (2016)

Lieferung erfolgt aus/von: Schweiz DE PB NW

ISBN: 9783961165421 bzw. 3961165424, in Deutsch, Diplom.de, Taschenbuch, neu.

44,86 (Fr. 48,40)¹ + Versand: 16,68 (Fr. 18,00)¹ = 61,54 (Fr. 66,40)¹
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Lieferung aus: Schweiz, Versandfertig innert 6 - 9 Tagen.
Using Additional Information in Streaming Algorithms, Streaming problems are algorithmic problems that are mainly characterized by their massive input streams. Because of these data streams, the algorithms for these problems are forced to be space-efficient, as the input stream length generally exceeds the available storage. In this thesis, the two streaming problems most frequent item and number of distinct items are studied in detail relating to their algorithmic complexities, and it is compared whether the verification of solution hypotheses has lower algorithmic complexity than computing a solution from the data stream. For this analysis, we introduce some concepts to prove space complexity lower bounds for an approximative setting and for hypothesis verification. For the most frequent item problem which consists in identifying the item which has the highest occurrence within the data stream, we can prove a linear space complexity lower bound for the deterministic and probabilistic setting. This implies that, in practice, this streaming problem cannot be solved in a satisfactory way since every algorithm has to exceed any reasonable storage limit. For some settings, the upper and lower bounds are almost tight, which implies that we have designed an almost optimal algorithm. Even for small approximation ratios, we can prove a linear lower bound, but not for larger ones. Nevertheless, we are not able to design an algorithm that solves the most frequent item problem space-efficiently for large approximation ratios. Furthermore, if we want to verify whether a hypothesis of the highest frequency count is true or not, we get exactly the same space complexity lower bounds, which leads to the conclusion that we are likely not able to profit from a stated hypothesis. The number of distinct items problem counts all different elements of the input stream. If we want to solve this problem exactly (in a deterministic or probabilistic setting) or approximately with a deterministic algorithm, we require once again linear storage size which is tight to the upper bound. However, for the approximative and probabilistic setting, we can enhance an already known space-efficient algorithm such that it is usable for arbitrarily small approximation ratios and arbitrarily good success probabilities. The hypothesis verification leads once again to the same lower bounds. However, there are some streaming problems that are able to profit from additional information such as hypotheses, as e.g., the median problem. Taschenbuch, 05.10.2016.
2
9783961165421 - Buff, Raffael: Using Additional Information in Streaming Algorithms
Buff, Raffael

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland DE HC NW

ISBN: 9783961165421 bzw. 3961165424, in Deutsch, Diplom.de, gebundenes Buch, neu.

Lieferung aus: Deutschland, Versandkostenfrei innerhalb von Deutschland.
Streaming problems are algorithmic problems that are mainly characterized by their massive input streams. Because of these data streams, the algorithms for these problems are forced to be space-efficient, as the input stream length generally exceeds the available storage. In this thesis, the two streaming problems most frequent item and number of distinct items are studied in detail relating to their algorithmic complexities, and it is compared whether the verification of solution hypotheses has Streaming problems are algorithmic problems that are mainly characterized by their massive input streams. Because of these data streams, the algorithms for these problems are forced to be space-efficient, as the input stream length generally exceeds the available storage. In this thesis, the two streaming problems most frequent item and number of distinct items are studied in detail relating to their algorithmic complexities, and it is compared whether the verification of solution hypotheses has lower algorithmic complexity than computing a solution from the data stream. For this analysis, we introduce some concepts to prove space complexity lower bounds for an approximative setting and for hypothesis verification. For the most frequent item problem which consists in identifying the item which has the highest occurrence within the data stream, we can prove a linear space complexity lower bound for the deterministic and probabilistic setting. This implies that, in practice, this streaming problem cannot be solved in a satisfactory way since every algorithm has to exceed any reasonable storage limit. For some settings, the upper and lower bounds are almost tight, which implies that we have designed an almost optimal algorithm. Even for small approximation ratios, we can prove a linear lower bound, but not for larger ones. Nevertheless, we are not able to design an algorithm that solves the most frequent item problem space-efficiently for large approximation ratios. Furthermore, if we want to verify whether a hypothesis of the highest frequency count is true or not, we get exactly the same space complexity lower bounds, which leads to the conclusion that we are likely not able to profit from a stated hypothesis. The number of distinct items problem counts all different elements of the input stream. If we want to solve this problem exactly (in a deterministic or probabilistic setting) or approximately with a deterministic algorithm, we require once again linear storage size which is tight to the upper bound. However, for the approximative and probabilistic setting, we can enhance an already known space-efficient algorithm such that it is usable for arbitrarily small approximation ratios and arbitrarily good success probabilities. The hypothesis verification leads once again to the same lower bounds. However, there are some streaming problems that are able to profit from additional information such as hypotheses, as e.g., the median problem. Lieferzeit 1-2 Werktage.
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9783961165421 - Raffael Buff: Using Additional Information in Streaming Algorithms
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Raffael Buff

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland EN NW

ISBN: 9783961165421 bzw. 3961165424, in Englisch, neu.

Lieferung aus: Deutschland, Versandfertig in 5 - 7 Tagen.
Using Additional Information in Streaming Algorithms, Streaming problems are algorithmic problems that are mainly characterized by their massive input streams. Because of these data streams, the algorithms for these problems are forced to be space-efficient, as the input stream length generally exceeds the available storage. In this thesis, the two streaming problems most frequent item and number of distinct items are studied in detail relating to their algorithmic complexities, and it is compared whether the verification of solution hypotheses has lower algorithmic complexity than computing a solution from the data stream. For this analysis, we introduce some concepts to prove space complexity lower bounds for an approximative setting and for hypothesis verification. For the most frequent item problem which consists in identifying the item which has the highest occurrence within the data stream, we can prove a linear space complexity lower bound for the deterministic and probabilistic setting. This implies that, in practice, this streaming problem cannot be solved in a satisfactory way since every algorithm has to exceed any reasonable storage limit. For some settings, the upper and lower bounds are almost tight, which implies that we have designed an almost optimal algorithm. Even for small approximation ratios, we can prove a linear lower bound, but not for larger ones. Nevertheless, we are not able to design an algorithm that solves the most frequent item problem space-efficiently for large approximation ratios. Furthermore, if we want to verify whether a hypothesis of the highest frequency count is true or not, we get exactly the same space complexity lower bounds, which leads to the conclusion that we are likely not able to profit from a stated hypothesis. The number of distinct items problem counts all different elements of the input stream. If we want to solve this problem exactly (in a deterministic or probabilistic setting) or approximately with a deterministic algorithm, we require once again linear storage size which is tight to the upper bound. However, for the approximative and probabilistic setting, we can enhance an already known space-efficient algorithm such that it is usable for arbitrarily small approximation ratios and arbitrarily good success probabilities. The hypothesis verification leads once again to the same lower bounds. However, there are some streaming problems that are able to profit from additional information such as hypotheses, as e.g., the median problem.
4
9783960675945 - Raffael Buff: Using Additional Information in Streaming Algorithms
Raffael Buff

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland ~DE NW FE EB DL

ISBN: 9783960675945 bzw. 3960675941, vermutlich in Deutsch, Using Additional Information in Streaming Algorithms, neu, Erstausgabe, E-Book, elektronischer Download.

Using Additional Information in Streaming Algorithms ab 29.99 € als pdf eBook: 1. Auflage. Aus dem Bereich: eBooks, Sachthemen & Ratgeber, Computer & Internet,.
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9783960675945 - Raffael Buff: Using Additional Information in Streaming Algorithms
Raffael Buff

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland DE PB NW

ISBN: 9783960675945 bzw. 3960675941, in Deutsch, Anchor Academic Publishing, Taschenbuch, neu.

29,99 + Versand: 7,50 = 37,49
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Using Additional Information in Streaming Algorithms ab 29.99 € als pdf eBook: . Aus dem Bereich: eBooks, Sachthemen & Ratgeber, Computer & Internet,.
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9783961165421 - Raffael Buff: Using Additional Information in Streaming Algorithms
Symbolbild
Raffael Buff

Using Additional Information in Streaming Algorithms (2016)

Lieferung erfolgt aus/von: Deutschland DE PB NW RP

ISBN: 9783961165421 bzw. 3961165424, in Deutsch, Diplom.De Okt 2016, Taschenbuch, neu, Nachdruck.

Lieferung aus: Deutschland, Versandkostenfrei.
Von Händler/Antiquariat, AHA-BUCH GmbH [51283250], Einbeck, Germany.
This item is printed on demand - Print on Demand Neuware - 132 pp. Englisch.
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9783961165421 - Raffael Buff: Using Additional Information in Streaming Algorithms
Symbolbild
Raffael Buff

Using Additional Information in Streaming Algorithms (2016)

Lieferung erfolgt aus/von: Deutschland DE PB NW RP

ISBN: 9783961165421 bzw. 3961165424, in Deutsch, Diplom.De, Taschenbuch, neu, Nachdruck.

Lieferung aus: Deutschland, Versandkostenfrei.
Von Händler/Antiquariat, English-Book-Service Mannheim [1048135], Mannheim, Germany.
This item is printed on demand for shipment within 3 working days.
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9783960675945 - Raffael Buff: Using Additional Information in Streaming Algorithms
Raffael Buff

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland DE NW EB DL

ISBN: 9783960675945 bzw. 3960675941, in Deutsch, Anchor Academic Publishing, neu, E-Book, elektronischer Download.

Lieferung aus: Deutschland, E-Book zum Download.
Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
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3961165424 - Raffael Buff: Using Additional Information in Streaming Algorithms
Raffael Buff

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland ~EN PB NW

ISBN: 3961165424 bzw. 9783961165421, vermutlich in Englisch, Diplom.de, Taschenbuch, neu.

39,99 + Versand: 7,50 = 47,49
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Die Beschreibung dieses Angebotes ist von geringer Qualität oder in einer Fremdsprache. Trotzdem anzeigen
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9783960675945 - Using Additional Information in Streaming Algorithms

Using Additional Information in Streaming Algorithms

Lieferung erfolgt aus/von: Deutschland DE NW EB DL

ISBN: 9783960675945 bzw. 3960675941, in Deutsch, neu, E-Book, elektronischer Download.

Using Additional Information in Streaming Algorithms ab 29.99 EURO.
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