Data Processing for the AHP/ANP

Business & Finance, Management & Leadership, Operations Research
Cover of the book Data Processing for the AHP/ANP by Daji Ergu, Yong Shi, Gang Kou, Yi Peng, Springer Berlin Heidelberg
View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart
Author: Daji Ergu, Yong Shi, Gang Kou, Yi Peng ISBN: 9783642292132
Publisher: Springer Berlin Heidelberg Publication: September 3, 2012
Imprint: Springer Language: English
Author: Daji Ergu, Yong Shi, Gang Kou, Yi Peng
ISBN: 9783642292132
Publisher: Springer Berlin Heidelberg
Publication: September 3, 2012
Imprint: Springer
Language: English

The positive reciprocal pairwise comparison matrix (PCM) is one of the key components which is used to quantify the qualitative and/or intangible attributes into measurable quantities. This book examines six understudied issues of PCM, i.e. consistency test, inconsistent data identification and adjustment, data collection, missing or uncertain data estimation, and sensitivity analysis of rank reversal. The maximum eigenvalue threshold method is proposed as the new consistency index for the AHP/ANP. An induced bias matrix model (IBMM) is proposed to identify and adjust the inconsistent data, and estimate the missing or uncertain data. Two applications of IBMM including risk assessment and decision analysis, task scheduling and resource allocation in cloud computing environment, are introduced to illustrate the proposed IBMM.

View on Amazon View on AbeBooks View on Kobo View on B.Depository View on eBay View on Walmart

The positive reciprocal pairwise comparison matrix (PCM) is one of the key components which is used to quantify the qualitative and/or intangible attributes into measurable quantities. This book examines six understudied issues of PCM, i.e. consistency test, inconsistent data identification and adjustment, data collection, missing or uncertain data estimation, and sensitivity analysis of rank reversal. The maximum eigenvalue threshold method is proposed as the new consistency index for the AHP/ANP. An induced bias matrix model (IBMM) is proposed to identify and adjust the inconsistent data, and estimate the missing or uncertain data. Two applications of IBMM including risk assessment and decision analysis, task scheduling and resource allocation in cloud computing environment, are introduced to illustrate the proposed IBMM.

More books from Springer Berlin Heidelberg

Cover of the book Application of Bacterial Pigments as Colorant by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book IT-Management Real Estate by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Facility Services by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Transactions on Petri Nets and Other Models of Concurrency XI by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Interest Rate Derivatives by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Phosphoinositide 3-kinase in Health and Disease by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Smart Hydrogel Modelling by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Semantically Based Clinical TCM Telemedicine Systems by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Optical Properties of Nanostructured Metallic Systems by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Wastewater Treatment with Algae by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Drilling of Polymer-Matrix Composites by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Ages, Geochemistry and Metamorphism of Neoarchean Basement in Shandong Province by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Kinderallergologie in Klinik und Praxis by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Supplementary Cementing Materials by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
Cover of the book Global Change by Daji Ergu, Yong Shi, Gang Kou, Yi Peng
We use our own "cookies" and third party cookies to improve services and to see statistical information. By using this website, you agree to our Privacy Policy