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Chapter 2 ANALYTIC HIERARCHY PROCESS A H P

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Best New Car to Buy. Price. Running cost. Comfort. Status. A. B. C. Hierarchy model: To Buy Best New Car. Level 1 Focus: Level 2 Criteria; Level 3. Sub-Criteria: ... – PowerPoint PPT presentation

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Title: Chapter 2 ANALYTIC HIERARCHY PROCESS A H P


1
Chapter 2 ANALYTIC HIERARCHY PROCESS(A H P)
2
Overview
  • AN MADM TECHNIQUE
  • Developers Prof. T.L. Saaty Associates
    University of pittsburgh, U.S.A
  • Software Expert Choice (Developed by Saaty
    Associates)
  • AHP a MADM technique
  • Approach
  • Analysis of a complex problem through
    decomposition and synthesis
  • Structured in hierarchy
  • Hierarchy
  • A system of levels, each consisting of elements
    or factors
  • Hierarchical structuring
  • How do we structure the functions of a system
    hierarchically?
  • How do we measure the impacts of any element in
    the hierarchy?

3
  • Examples of Hierarchy

Level 1 Focus
Best New Car to Buy
Level 2 Criteria
Price
Running cost
Comfort
Status
Level 3 Alternatives
A
B
C
Hierarchy model To Buy Best New Car
Level 1 Focus Level 2 Criteria Level 3
Sub-Criteria Level 4 Alternatives
Hierarchy Model To Rank Schools
4
Advanced Manufacture System
Selection of Alternatives
NPV
Flexibility
Productivity
Existing
Flexible Manufacturing System
Flexible Manufacturing Cell
Performance Evaluation Hierarchy
5
Profitability
Dependability
Flexibility
Cost
Quality
Number of products
Capital Cost
Producers view
Production process
Operating Cost
Consumers view
Design Changes
Labor
Volume Changes
Prob. of Failure
Time to Repair
Reject Rate
Rework Rate
Availability
Skill Level
Lead time to manufacturing
Prob. of meet. demand

A
B
Z
C
Hierarchy Model For Capacity Expansive Model
Decision
6
Societys Overall Benefit
Health,,Safety Environment
Political Factors
National Economy
Cheap Electricity
Foreign Trade
Capital Resource
National Resource
Unavailable Pollution
Accident Long-term Risks
Independence
Centralization
Political co-operativeness
No big Power plants
Coal Fired Power Plant
Nuclear Power Plant
Hierarchy Model ENERGY DECISION
7
Level 1 Focus
Dam Decision
Govt. Authority
Parliament
Local Citizens
Conserva-tionists
Level 2 Actors
Flood Control
Economic Stimulus
Preservation of Species
Protecting Environ.
Level 3 Criteria
Alt-1 Completed the Dam
Alt-2 Halt Construction
Level 4 Alternatives
Alt-3 Replace
8
Aim of Decision
Criteria 1
Criteria 1
Criteria 1
Sub-criteria 1
Sub-criteria 1
Sub-criteria 1
Criteria 1 in lowest level
Criteria 1 in lowest level
Criteria 1 in lowest level
Project 1
Project 1
Project 1
Stratified Hierarchic Structure Pattern (Relative
and Absolute ranking)
9
Pair-wise ComparisonScale of Relative Importance
  • Intensity Definition Explanation
  • 1 Equal importance Two activities contribute
    equally to the objective
  • 3 Moderate importance Slightly favors one over
    another
  • 5 Essential or strong Strongly favors one over
    importance another
  • 7 Demonstrated Dominance of one
    importance demonstrated in practice
  • 9 Extreme importance Evidence favoring one over
    another of higher possible order of
    affirmative
  • (2,4,6,8) Intermediate value When compromise is
    needed

10
Comparison Matrix An Example
A B C A 1 3 9 B 1/3 1 3 C 1/9 1/3 1
n(n-1)/2 comp.
Column
9/13 3/13 1/13
0.69 0.23 0.08
1 1/3 1/9
Normalized to
or
Represents the relative importance of A,B,C
corresponding to the judgments in the first
row. For the other columns, when procedure is
repeated, the same results are obtained.
3 1 1/3
0.69 0.23 0.08
9 3 1
0.69 0.23 0.08
This is a situation where call consistent. The
normalized principal eigenvector is identical to
the normalized columns of the comparison matrix.
11
ESTIMATION OF PRINCIPAL EIGENVECTOR
  • 1. Normalizing the sum of row elements
  • 2. Taking the normalized form of the reciprocals
    of the sum of the elements of each column
  • 3. Averaging over the normalized columns
  • 4. Normalizing the geometric mean of each row
  • (Recommended)
  • Note
  • For a non-consistent matrix, generally the above
    methods give different results
  • For a consistent matrix the results are identical

12
Example
A B C A 1 4 9 B 1/4 1 2 C 1/9 1/2 1
Normalized relative weights of 3 columns
0.735 0.184 0.084
0.727 0.182 0.091
0.750 0.167 0.083
  • The inconsistency shown is not an error but that
    it reflects the process of
  • obtaining as much data as possible.
  • The principal eigenvector may be obtained by
    averaging across the rows

0.737 0.178 0.085
(Note A matrix is said to be consistent if aij
ajk aik for all i,j,k )
13
Consistency
  • Consistency should not be forced.
  • For example BgtA 2gt1 and CgtB 3gt1
  • We do not insist that CgtA 6gt1
  • The rationed is independent judgement To add
    new info. and connection and balance for existing
    info. But, too much inconsistency is undesirable.
  • It can be proved that, for a consistent
    reciprocal matrix ?max n
  • where ?max largest eigenvalue of matrix order
    n.
  • Saatys measure of consistency (Consistency
    Index)
  • C.I. ( ?max n ) / (n-1)

14
  • How to determine ?max ?
  • Add entries in each column of the judgment matrix
    and multiply the first column sum by the
    normalized weight of first row, etc. and add.
  • A B C Norm. Wts..
  • A 1 3 9 0.69
  • B 1/3 1 3 0.23
  • C 1/9 1/3 1 0.08
  • Col. sum 1.44 4.33 13
  • ?max 1.44(0.69) 4.33(0.23) 13(0.08) 3
  • C.I. (3-3)/(3-1) 0

15
  • Example of inconsistency
  • 1.
  • A B C Norm. Wts.
  • A 1 4 9 0.737
  • B 1/4 1 2 0.178
  • C 1/9 1/2 1 0.085
  • S 1.36 5.5 12
  • ?max 1.36(0.737) 5.5(0.178) 12(0.085)
    3.002
  • C.I. 0.002/2 0.001
  • 2.
  • A B C Norm.Wts.
  • A 1 2 1/2 0.333
  • B 1/2 1 2 0.333
  • C 2 1/2 1 0.333
  • S 3.5 3.5 3.5

16
  • Randomly Generated C.I. (R.I.)
  • n 1 2 3 4 5 6 7 8
  • R.I 0 0 0.58 0.90 1.12 1.24 1.32 1.41
  • 9 10 11 12 13 14 15
  • 1.45 1.49 1.51 1.48 1.56 1.57 1.59
  • Consistency Ratio C.R. C.I./R.I.
  • Acceptable C.R. is 0.10 or less
  • USING PREVIOUS EXAMPLES
  • C.R. 0.001/0.58 1.6
  • C.R. 0.248/0.58 50

17
  • ILLUSTRATIVE EXAMPLE
  • Problem Hierarchy
  • Level 1 Best Car to Buy
  • Level 2 Price Running Cost
    Comfort Status
  • Level 3 A B C
  • Paired Comparison Matrix at Level 1
  • Price Running Cost Comfort Status Norm.Wts.
    (Norm geom.mean)
  • Price 1 3 7 8 0.582
  • Cost 1/3 1 5 5 0.279
  • Comfort 1/7 1/5 1 3 0.090
  • Status 1/8 1/5 1/3 1 0.050
  • S 1.6 4.4 13.3 17
  • ?max 1.6(0.582) 4.4(0.279) 13.3(0.90)
    17(0.05) 4.198
  • C.I. (4.198 4)/(4-1) 0.066
  • C.R. 0.066/0.9 0.073 (Acceptable)

18
  • Paired Comparison Matrices at Level 2
  • Price A B C Norm.Wts.
  • A 1 2 3 0.540
  • B ½ 1 2 0.297
  • C 1/3 ½ 1 0.163
  • ?max 3.009
  • C.I. 0.005
  • C.R. 0.008 (Acceptable)
  • Running cost
  • A B C Norm.Wts.
  • A 1 1/5 ½ 0.106
  • B 5 1 7 0.745
  • C 2 1/7 1 0.150
  • ?max 3.119
  • C.I. 0.059
  • C.R. 0.10 (Acceptable)
  • Do the same procedure for Comfort and Status.
    Since their weights are very small, 0.09 and
    0.05. respectively , we assume that the effect of
    leaving them out from further consideration is
    negligible.
  • Adjusted weight of Price 0.582 / (0.582
    0.279) 0.67

19
  • Overall
  • Price Running Cost Composite Overall

    (0.67) (0.33)
    Wt. Ranking
  • Car A 0.540 0.106 0.395 2
  • Car B 0.297 0.745 0.444 1
  • Car C 0.163 0.150 0.159 3
  • Composite Wts.
  • Car A 0.540(0.67) 0.106(0.33) 0.395
  • Car B 0.279(0.67) 0.745(0.33) 0.444
  • Car C 0.163(0.67) 0.150(0.33) 0.159
  • Overall Consistency of Hierarchy
  • 0.066(1) 0.055(0.67) 0.059(0.33) /
    0.9(1) 0.58(0.61) 0.58(0.33)
  • 0.06

20
SCALING OBJECTIVE FACTORS
  • ORIGINAL SCALE

AHP SCALE
97531
21
  • Why tolerate 10 inconsistency ?
  • Inconsistency itself is important for without it,
    new knowledge which changes preferences order
    cannot be admitted.
  • Assuming all knowledge to be consistent
    contradicts experience which requires continued
    adjustment in understanding
  • From experience it has been found that 10 is a
    resonable threshold value
  • Why limit seven elements in paired comparison?
  • Cognitive psychologists believe that an
    individual cannot simultaneously compare more
    than (7 2) elements (without being confused)

22
Example of AHPs Ability to Predict
  • ELECTION CHOICE
  • PERSONALITY
  • Region
  • Charisma
  • Media
  • Appearance
  • POLITICS
  • Party
  • Running mate
  • Money
  • Religion
  • APTITUDE
  • Leadership
  • Experience
  • PHYSICAL
  • Age
  • Appearance
  • ISSUES
  • Economic
  • Security
  • Foreign affairs
  • Social order

CANDIDATES A B .
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