Algorithms for Streaming Graphs: Approaching Graph Problems with Limited Memory and Without Random - Mariano Zelke - Kirjat - Suedwestdeutscher Verlag fuer Hochschuls - 9783838108063 - torstai 10. syyskuuta 2009
Mikäli Kansi ja otsikko eivät täsmää, on otsikko oikein

Algorithms for Streaming Graphs: Approaching Graph Problems with Limited Memory and Without Random

Hinta
€ 50,49

Tilattu etävarastosta

Arvioitu toimitus ke - to 5. - 13. elo
Saat ilmoituksen artistin Mariano Zelke uusista julkaisuista
Lisää iMusic-toivelistallesi
tai

Ei vielä arvioitu

An algorithm solving a graph problem is usually expected to have fast random access to the input graph G and a working memory being able to store G completely. These powerful assumptions are put in question by massive graphs that exceed common working memories and that can only be stored on disks or even tapes. Here, random access is very time-consuming. To tackle massive graphs stored on external memories, the semi-streaming model has been proposed. It permits a working memory of restricted size and forbids random access to G. In contrast, the input is assumed to be a stream of edges in arbitrary order. In this book we develop algorithms in the semi-streaming model approaching different graph problems. For the problems of testing graph connectivity and bipartiteness and for the computation of a minimum spanning tree, we show how to obtain optimal running times. For the intractable problem of finding a maximum weighted matching, we present the best known approximation algorithm. Finally, we show the minimum and the maximum cut problem in a graph both to be intractable in the semi-streaming model and give algorithms that approximate respective solutions in a randomized fashion.

Media Kirjat     Paperback Book   (Kirja pehmeillä kansilla ja liimatulla selällä)
Julkaisupäivämäärä torstai 10. syyskuuta 2009
ISBN13 9783838108063
Tuottaja Suedwestdeutscher Verlag fuer Hochschuls
Sivujen määrä 72
Mitta 150 × 220 × 10 mm   ·   125 g
Kieli Saksa  

Lisää samalta julkaisijalta