Article
Deriving Weights in Multiple-Criteria Decision Making with Support Vector Machines
Author/s | Carrizosa Priego, Emilio José
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Department | Universidad de Sevilla. Departamento de Estadística e Investigación Operativa |
Date | 2006-01-01 |
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Abstract | A key problem in Multiple-Criteria Decision Making is how to measure the importance
of the different criteria when just a partial preference relation among actions
is given. In this note we address the problem of ... A key problem in Multiple-Criteria Decision Making is how to measure the importance of the different criteria when just a partial preference relation among actions is given. In this note we address the problem of constructing a linear score function (and thus how to associate weights of importance to the criteria) when a binary relation comparing actions and partial information (relative importance) on the criteria are given. It is shown that these tasks can be done via Support Vector Machines, an increasingly popular Data Mining technique, which reduces the search of the weights to the resolution of (a series of) nonlinear convex optimization problems with linear constraints. An interactive method is then presented and illustrated by solving a multiple-objective 0-1 knapsack problem. Extensions to the case in which data are imprecise (given by intervals) or intransitivities in strict preferences exist are outlined. |
Citation | Carrizosa Priego, E.J. (2006). Deriving Weights in Multiple-Criteria Decision Making with Support Vector Machines. TOP, 14 (2), 399-424. |
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