Independent Random Sampling Methods

Independent Random Sampling Methods

David Luengo / Joaquín Míguez / Luca Martino

173,16 €
IVA incluido
Disponible
Editorial:
Springer Nature B.V.
Año de edición:
2019
ISBN:
9783030102418
173,16 €
IVA incluido
Disponible

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This book systematically addresses the design and analysis of efficient techniques for independent random sampling. Both general-purpose approaches, which can be used to generate samples from arbitrary probability distributions, and tailored techniques, designed to efficiently address common real-world practical problems, are introduced and discussed in detail. In turn, the monograph presents fundamental results and methodologies in the field, elaborating and developing them into the latest techniques. The theory and methods are illustrated with a varied collection of examples, which are discussed in detail in the text and supplemented with ready-to-run computer code.The main problem addressed in the book is how to generate independent random samples from an arbitrary probability distribution with the weakest possible constraints or assumptions in a form suitable for practical implementation. The authors review the fundamental results and methods in the field, address the latest methods, and emphasize the links and interplay between ostensibly diverse techniques.

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Otros libros del autor

  • Independent Random Sampling Methods
    David Luengo / Joaquín Míguez / Luca Martino
    This book systematically addresses the design and analysis of efficient techniques for independent random sampling. Both general-purpose approaches, which can be used to generate samples from arbitrary probability distributions, and tailored techniques, designed to efficiently address common real-world practical problems, are introduced and discussed in detail. In turn, the mon...