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Kirjailija

Daji Ergu

Kirjat ja teokset yhdessä paikassa: 2 kirjaa, julkaisuja vuosilta 2012-2014, suosituimpien joukossa Data Processing for the AHP/ANP. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

2 kirjaa

Kirjojen julkaisuhaarukka 2012-2014.

Data Processing for the AHP/ANP

Data Processing for the AHP/ANP

Gang Kou; Daji Ergu; Yi Peng; Yong Shi

Springer-Verlag Berlin and Heidelberg GmbH Co. K
2014
nidottu
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.
Data Processing for the AHP/ANP

Data Processing for the AHP/ANP

Gang Kou; Daji Ergu; Yi Peng; Yong Shi

Springer-Verlag Berlin and Heidelberg GmbH Co. K
2012
sidottu
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.