150 likes | 289 Vues
This document provides an in-depth analysis of Multi-Attribute Value Theory (MAVT) and contrasts it with Multi-Attribute Utility Theory (MAUT). It highlights the processes of determining preference through single-dimensional value functions and the construction of a global preference value function for alternatives in decision-making. MAVT is particularly useful when handling multiple conflicting objectives without uncertainty in alternative outcomes. Key concepts include weighted value functions, piecewise linear functions, and exponential value functions, illustrated with practical examples.
E N D
Analyzingthe Problem(MAVT) Y. İlker TOPCU, Ph.D. www.ilkertopcu.net www.ilkertopcu.org www.ilkertopcu.info www.facebook.com/yitopcu twitter.com/yitopcu
MAVT vs. MAUT • Multi Attribute Value Theory (Evren & Ülengin, 1992; Kirkwood, 1997) – Weighted Value Function (Belton & Vickers, 1990)– SMARTS (Simple Multi Attribute Rating Technique by Swings) (Kirkwood, 1997) • Multi Attribute Utility Theory (MAUT) is treated separately from MAVT when “risks” or “uncertainties” have a significant role in the definition and assessment of alternatives(Korhonen et al., 1992; Vincke, 1986; Dyer et al., 1992): • The preferences of DM is represented for each attribute i, by a (marginal) function Ui, such that a is better than b for i iff Ui(a)>Ui(b) • These functions (Ui) are aggregated in a unique function U (representing the global preferences of the DM) so that the initial MA problem is replaced by a unicriterion problem.
MAVT • This procedure is appropriate when there are multiple, conflicting objectives and no uncertainty about the outcome (performance value w.r.t. attribute) of each alternative • In order to determine which alternative is most preferred, tradeoffs among attributes must be considered: That is alternatives can be ranked if some procedure is used to combine all attributes into a single index of overall desirability (global preference) of an alternative: Avalue functioncombines the multiple evaluation measures (attributes) into a single measure of the overall value of each alternative
MAVT: Value Function • Value function is a weighted sum of functions over each individual attribute: v(ai) = • Thus, determining a value function requires that: • Single dimensional (single attribute) value functions(vj) be specified for each attribute • Weights (wj) be specified for each single dimensional value function • By using the determined value function preferences can be modeled: a P b v(a) > v(b); a I b v(a) = v(b)
Single Dimensional Value Function • One of the procedures used for determining a single dimensional value function that is made up of segments of straight lines that are joined together into a piecewise linear function, • while the other procedure utilized a specific mathematical form called the exponential for the single dimensional value function v(the best performance value) = 1 v(the worst performance value) = 0
Piecewise Linear Function • Consider the increments in value that result from each successive increase (decrease) in the performance score of a benefit (cost) attribute, and place these increments in order of successively increasing value increments
Piecewise Linear Function EXAMPLE: 1-5 scale for a benefit attribute Suppose that value increment between 1 and 2 is twice as great as that between 2 and 3. Suppose that value increment between 2 and 3 is as great as that between 3 and 4 and as great as that between 4 and 5. In this case piecewise linear single dimensional value functions would be: v(1)=0, v(2)=0+2x, v(3)=2x+x, v(4)=3x+x, and v(5)=4x+x=1 v(1)=0, v(2)=0.4, v(3)=0.6, v(4)=0.8, and v(5)=1
Exponential Function • Appropriate when performance scores take any value (an infinite number of different values) • For benefit attributes: vj(xij) = where is the exponential constant for the value function
Exponential Function • For cost attributes: vj(xij) =
Exponential Constant • For benefit attribute z0.5 = (xm –) / ( – ) • For cost attribute z0.5 = (–xm) / ( – ) are used (where xm is the midvalue determined by DM such that v(xm)=0.5) to calculate z0.5 (the normalized value of xm) • The equation [0.5 = (1 – exp(–z0.5 / R)) / (1 – exp(–1 / R))] or Table 4.2 at p. 69 in Kirkwood (1997) is used to calculate R (normalized exponential constant) • = R( – ) is used to calculate
Example for MAVT • Price: Exponential single dimensional value function • Other: Piecewise linear single dim. value function • Let the best performance value for price is 100 m.u., the worst performance value for price is 350 m.u., and the midvalue is 250 m.u.: z0.5=0.4 R = 1.216 = 304 vp(300)=0.2705, vp(250)=0.5, vp(200)=0.6947, vp(100)=1 • Suppose that value increment for comfort between “average” and “excellent” is triple as great as that between “weak” and “average”: vc(weak)=0,vc(average)=0.25, vc(excellent)=1
Example for MAVT • Suppose that value increment for acceleration between “weak” and “average” is as great as that between “average” and “excellent”: va(weak)=0,va(average)=0.5, va(excellent)=1 • Suppose that value increment for design between “ordinary” and “superior” is four times as great as that between “inferior” and “ordinary”: vc(inferior)=0,vc(ordinary)=0.2, vc(superior)=1
Values of Global Value Function and Single Dimensional Value Functions