1 / 20

Multicriteria Decision Making

Multicriteria Decision Making . Analytical Hierarchy Processes. Overview of AHP. GP answers “how much?”, whereas AHP answers “which one?” AHP developed by Saati Method for ranking decision alternatives and selecting the best one when the decision maker has multiple objectives, or criteria.

Télécharger la présentation

Multicriteria Decision Making

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Multicriteria Decision Making Analytical Hierarchy Processes

  2. Overview of AHP • GP answers “how much?”, whereas AHP answers “which one?” • AHP developed by Saati • Method for ranking decision alternatives and selecting the best one when the decision maker has multiple objectives, or criteria

  3. Examples • Buying a house • Cost, proximity of schools, trees, nationhood, public transportation • Buying a car • Price, interior comfort, mpg, appearance, etc. • Going to a college

  4. Demonstrating AHP Technique • Identified three potential location alternatives: A,B, and C • Identified four criteria: Market, Infrastructure, Income level, and Transportation, • 1st level: Goal (select the best location) • 2nd level: How each of the 4 criteria contributes to achieving objective • 3rd level: How each of the locations contributes to each of the 4 criteria

  5. General Mathematical Process • Establish preferences at each of the levels • Determine our preferences for each location for each criteria • A might have a better infrastructure over the other two • Determine our preferences for the criteria • which one is the most important • Combine these two sets of preferences to mathematically derive a score for each location

  6. Pairwise Comparisons • Used to score each alternative on a criterion • Compare two alternatives according to a criterion and indicate the preference using a preference scale • Standard scale used in AHP

  7. Pairwise Comparison • If A is compared with B for a criterion and preference value is 3, then the preference value of comparing B with A is 1/3 • Pairwise comparison ratings for the market criterion • Any location compared to itself, must equally preferred

  8. Other Pairwise Comparison

  9. Developing Preferences within Criteria • Prioritize the decision alternatives within each criterion • Referred to synthesization • Sum the values in each column of the pairwise comparison matrices • Divide each value in a column by its corresponding column sum to normalize preference values • Values in each column sum to 1 • Average the values in each row • Provides the most preferred alternative (A, C, B) • Last column is called preference vector

  10. Other Preference Vectors

  11. Ranking the Criteria • Determine the relative importance or weight of the criteria • which one is the most important and which one is the least important one • Accomplished the same way we ranked the locations within each criterion, using pairwise comparison

  12. Normalizing Income level is the highest priority criterion followed by market

  13. Developing Overall Ranking Overall Score A= (0.1993)(0.5012)+(0.6535)(0.2819)+ (0.1780)(0.0860)+(0.1561)(0.0612) =0.3091 Overall Score B =0.1595 Overall Score C =0.5314 Preference Vector

  14. Summary • Develop a pairwise comparison matrix for each decision alternative for each criterion • Synthesization • Sum values in each column • Divide each value in each column by the corresponding column sum • Average the values in each row (provides preference vector for decision alternatives) • Combine the preference vectors • Develop the preference vector for criteria in the same way • Compute an overall score for each decision alternative • Rank the decision alternatives

  15. AHP Consistency • Decision maker uses pairwise comparison to establish the preferences using the preference scale • In case of many comparisons, the decision maker may lose track of previous responses • Responses have to be valid and consistent from a set of comparisons to another set • Suppose for a criterion • A is “very strongly preferred” to B and A is “moderately preferred” to C • C is “equally preferred” to B • Not consistent with the previous comparisons • Consistency Index (CI) measures the degree of inconsistency in the pairwise comparisons

  16. CI Computation Pairwise Comparison Matrix • Consider the pairwise comparisons for the 4 criteria • Multiply the Pairwise Comparison Matrix by the Preference Vector • Divide each value by the corresponding weights from the preference vector • If the decision maker was a perfectly consistent decision maker, then each of these ratios would be exactly 4 • CI=(4.1564-n)/(n-1), where n is the number of being compared Preference Vector * (1)(0.1993)+ (1/5)(0.6535)+…+(4)(0.0612)=0.8328 (5)(0.1993)+ (1)(0.6535)+…+(9)(0.0612)=2.8524 (1/3)(0.1993)+ (1/9)(0.6535)+…+(2)(0.0612)=0.3474 (1/4)(0.1993)+ (1/7)(0.6535)+…+(1)(0.0612)=0.2473 0.8328/0.1993=4.1786 2.8524/06535=4.3648 0.3474/.0760=4.0401 0.2473/0.0612=4.0422 Ave =4.1564

  17. Degree of Consistency • CI=(4.1564-4)/(4-1)=0.0521 • If CI=0, there would a perfectly consistent decision maker • Determine the inconsistency degree • Determined by comparing CI to a Random Index (RI) • RI values depend on n • Degree of consistency =CI/RI • IF CI/RI <0.1, the degree of consistency is acceptable • Otherwise AHP is not meaningful • CI/RI=0.0521/0.90=0.0580<0.1

  18. Scoring Model • Similar to AHP, but mathematically simpler • Decision criteria are weighted in terms of their relative importance • Each decision alternative is graded in terms of how well it satisfies the criteria using Si=Σgijwj, where • Wj=a weight between 0 and 1.00 assigned to criterion j indicating its relative importance • gij=a grade between 0 and 100 indicating how well the decision alternative i satisfies criterion j • Si=the total score for decision alternative i

  19. Example • Weight assigned to each criterion indicates its relative importance • Grades assigned to each alternative indicate how well it satisfies each criterion (0.3)(40)+ (0.25)(75)+…+(0.10)(80)=62.75 (0.3)(60)+ (0.25)(80)+…+(0.10)(30)=73.50 (0.3)(90)+ (0.25)(65)+…+(0.10)(50)=76.00 (0.3)(60)+ (0.25)(90)+…+(0.10)(70)=77.75 Si=Σgijwj=

  20. Example • Purchasing a mountain bike • Three criteria: price, gear action, weight/durability • Three types of bikes: A,B,C • Developed pairwise comparison matrices I,II,III • Ranked the decision criteria based on the pairwise comparison • Select the best bike using AHP

More Related