Article ID Journal Published Year Pages File Type
5111701 Omega 2017 31 Pages PDF
Abstract
The knowledge of extreme points not only helps us to prioritize alternatives but also supports iterative exploration of decision-maker's preference by investigating modified extreme points caused by additional preference information. A wide range of eligible attribute weights, however, often fail to result in the best alternative or a complete ranking of alternatives. To address this situation, we consider an approximate weighting method, so called the minimizing squared deviations from extreme points (MSD) which locates the attribute weights at the barycenter of a weight set. Accordingly, the MSD approach extends the rank order centroid (ROC) weighting method which is known to outperform other approximate weighting methods in case of ranked attribute weights. The evidence of the MSD's superiority over a linear program-based weighting method is verified via simulation analysis under different forms of incomplete attribute weights.
Related Topics
Social Sciences and Humanities Business, Management and Accounting Strategy and Management
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