Stochastic Benchmarking Stochastic Benchmarking
International Series in Operations Research & Management Science

Stochastic Benchmarking

Theory and Applications

    • 54,99 €
    • 54,99 €

Descrizione dell’editore

This book introduces readers to benchmarking techniques in the stochastic environment, primarily stochastic data envelopment analysis (DEA), and provides stochastic models in DEA for the possibility of variations in inputs and outputs. It focuses on the application of theories and interpretations of the mathematical programs, which are combined with economic and organizational thinking. The book’s main purpose is to shed light on the advantages of the different methods in deterministic and stochastic environments and thoroughly prepare readers to properly use these methods in various cases. Simple examples, along with graphical illustrations and real-world applications in industry, are provided for a better understanding. The models introduced here can be easily used in both theoretical and real-world evaluations.


This book is intended for graduate and PhD students, advanced consultants, and practitioners with an interest in quantitative performance evaluation.

GENERE
Affari e finanze personali
PUBBLICATO
2021
11 dicembre
LINGUA
EN
Inglese
PAGINE
158
EDITORE
Springer International Publishing
DATI DEL FORNITORE
Springer Science & Business Media LLC
DIMENSIONE
6,5
MB
Industrial Decision Analysis Industrial Decision Analysis
2026
Stochastic Benchmarking Stochastic Benchmarking
2025
Retail Space Analytics Retail Space Analytics
2023
Retail Supply Chain Management Retail Supply Chain Management
2015
Queues Queues
2013
Handbook of Stochastic Models and Analysis of Manufacturing System Operations Handbook of Stochastic Models and Analysis of Manufacturing System Operations
2013
Planning Production and Inventories in the Extended Enterprise Planning Production and Inventories in the Extended Enterprise
2011
Applied Linear Regression for Business Analytics with Python Applied Linear Regression for Business Analytics with Python
2026