Doprava zdarma se Zásilkovnou nad 1 499 Kč
PPL Parcel Shop 54 Balík do ruky 74 Balíkovna 49 GLS 54 Kurýr GLS 74 Zásilkovna 49 PPL 99

High Performance Discovery in Time Series

Jazyk AngličtinaAngličtina
Kniha Brožovaná
Kniha High Performance Discovery in Time Series ew York University
Libristo kód: 01420758
Nakladatelství Springer, Berlin, října 2010
Time-series data data arriving in time order, or a data stream can be found in fields such as physic... Celý popis
? points 304 b
3 037 včetně DPH
Skladem u dodavatele v malém množství Odesíláme za 13-16 dnů

30 dní na vrácení zboží


Mohlo by vás také zajímat


Souhvězdí Něhy Renáta Madejová / Pevná
common.buy 159
Slovenky Richard Rychtarech / Brožovaná
common.buy 165
EC Archives: Frontline Combat Harvey Kurtzman / Pevná
common.buy 1 232
Faith for the Future Jesse Zink / Brožovaná
common.buy 327
Polylactic Acid Lee Tin Sin / Pevná
common.buy 7 557
Progress in Optimization Andrew Eberhard / Pevná
common.buy 3 037

Time-series data data arriving in time order, or a data stream can be found in fields such as physics, finance, music, networking, and medical instrumentation. Designing fast, scalable algorithms for analyzing single or multiple time series can lead to scientific discoveries, medical diagnoses, and perhaps profits.§High Performance Discovery in Time Series presents rapid-discovery techniques for finding portions of time series with many events (i.e., gamma-ray scatterings) and finding closely related time series (i.e., highly correlated price and return histories, or musical melodies). A typical time-series technique may compute a "consensus" time series from a collection of time series to use regression analysis for predicting future time points. By contrast, this book aims at efficient discovery in time series, rather than prediction, and its novelty lies in its algorithmic contributions and its simple, practical algorithms and case studies. It presumes familiarity with only basic calculus and some linear algebra.§Topics and Features:§Presents efficient algorithms for discovering unusual bursts of activity in large time-series databases§Describes the mathematics and algorithms for finding correlation relationships between thousands or millions of time series across fixed or moving windows§Demonstrates strong, relevant applications built on a solid scientific basis§Outlines how readers can adapt the techniques for their own needs and goals§Describes algorithms for query by humming, gamma-ray burst detection, pairs trading, and density detection§Offers self-contained descriptions of wavelets, fast Fourier transforms, and sketches as they apply to time-series analysis§This new monograph provides a technical survey of concepts and techniques for describing and analyzing large-scale time-series data streams. It offers essential coverage of the topic for computer scientists, physicists, medical researchers, financial mathematicians, musicologists, and researchers and professionals who must analyze massive time series. In addition, it can serve as an ideal text/reference for graduate students in many data-rich disciplines.This monograph is a technical survey of concepts and techniques for describing and analyzing large-scale time-series data streams. Some topics covered are algorithms for query by humming, gamma-ray burst detection, pairs trading, and density detection. Included are self-contained descriptions of wavelets, fast Fourier transforms, and sketches as they apply to time-series analysis. Detailed applications are built on a solid scientific basis.§Time-series data data arriving in time order, or a data stream can be found in fields such as physics, finance, music, networking, and medical instrumentation. Designing fast, scalable algorithms for analyzing single or multiple time series can lead to scientific discoveries, medical diagnoses, and perhaps profits.§High Performance Discovery in Time Series presents rapid-discovery techniques for finding portions of time series with many events (i.e., gamma-ray scatterings) and finding closely related time series (i.e., highly correlated price and return histories, or musical melodies). A typical time-series technique may compute a "consensus" time series from a collection of time series to use regression analysis for predicting future time points. By contrast, this book aims at efficient discovery in time series, rather than prediction, and its novelty lies in its algorithmic contributions and its simple, practical algorithms and case studies. It presumes familiarity with only basic calculus and some linear algebra.§Topics and Features:§Presents efficient algorithms for discovering unusual bursts of activity in large time-series databases§Describes the mathematics and algorithms for finding correlation relationships between thousands or millions of time series across fixed or moving windows§Demonstrates strong, relevant applications built on a solid scientific basis§Outlines how readers can adapt the techniques for their own needs and goals§Describes algorithms for query by humming, gamma-ray burst detection, pairs trading, and density detection§Offers self-contained descriptions of wavelets, fast Fourier transforms, and sketches as they apply to time-series analysis§This new monograph provides a technical survey of concepts and techniques for describing and analyzing large-scale time-series data streams. It offers essential coverage of the topic for computer scientists, physicists, medical researchers, financial mathematicians, musicologists, and researchers and professionals who must analyze massive time series. In addition, it can serve as an ideal text/reference for graduate students in many data-rich disciplines.

Přihlášení

Přihlaste se ke svému účtu. Ještě nemáte Libristo účet? Vytvořte si ho nyní!

 
povinné
povinné

Nemáte účet? Získejte výhody Libristo účtu!

Díky Libristo účtu budete mít vše pod kontrolou.

Vytvořit Libristo účet