an ahp application to computer system selection

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application development is au area of explosive growth, providing dramatic ... computer aided design and drafting (CADD) systems make it possible to more ...
Mathl. Comput. Modelling Vol. 15, No. 7, pp. 83-93, Printed in Great Britain. All rights reserved

AN AHP

APPLICATION

08%7177191 83.99 + 0.00 Copyright@ 1991 Pergamon Press plc

1991

TO COMPUTER

RAVI CHAND

VELLORE

AND DAVID

SYSTEM

SELECTION

L. OLSON

Department of Business Analysis & Research, Texas A&M University College Station, TX 77843

(Received

October

1990)

Abstract--Computer application development is au area of explosive growth, providing dramatic new capabilities to do additional work faster and more accurately. In the construction industry, computer aided design and drafting (CADD) systems make it possible to more completely specify work to be done. Some project owners require drawings be submitted in magnetic form. Therefore, it is necessary for construction and engineeringfhms to acquire and develop expertise in state of the art computer systems. Because many system configurations are available, selection of CADD systems is an important decision, requiring consideration of a number of objectives. AHP is used to combine cost factors with subjective factors. AHP also is used to consider the impact on end users as a group and au central data processing.

1. INTRODUCTION Computer development has yielded many tools which aid almost every aspect of human endeavor. Computer aided design is one of the most impressive application developments. Manual drafting methods, requiring untold manhours of tedious effort, have been replaced by more precise and much faster electronic means of developing engineering drawings. As new technology develops and demonstrates strong superiority over past technology, it soon permeates the way operations are conducted throughout an industry. Another feature of new technology is that system acquisition is complicated. In an environment of rapid technological development, new systems have obvious benefit for organizations. However, there are many options available, with diverse compensating advantages. Further, the impact on organization wide performance is complicated, as new techniques outdate the procedures that employees throughout the organization have developed with experience. New computer technology often allows end users to operate system applications. This can create new factors of complexity, in that the impact of system acquisition affects many aspects of organization operations. End user computing (EUC) involves the operation of computer applications by individuals EUC has proven very beneficial in many organizations performing specified functional tasks. (Guimaraes and Hamanujam [l] and Hivard and Huff [2]). B u t control problems develop with new systems, as there are a variety of computer experience levels within an organization. EUC activity is expected to be over 70% of organizational computing in the 1990s (Benjamin [3] and Greenberg [4]). While EUC activity is expected to reap great benefits, it creates a challenge for rational management, as many new proposals can be expected. This paper presents an analysis to determine the best investment in a computer aided design and drafting (CADD) decision. CADD is an area of rapidly growing technology, with many new products being developed, resulting in a dynamic environment (Sawyer [5]; Stover [S]). The decision involved a number of incommensurate criteria, requiring analysis capable of reflecting the relative value of available options. Further, the decision involves impact on two groups-end users of computing (EUC) and central data processing/management information systems (DP/MIS). Analytic hierarchy process (Saaty [7]) can be a valuable tool in identifying criteria of importance, in systematically considering the impact of the decision on a number of organizational systems, and in aiding the decision maker to reach a more educated and rational decision. Typeset by A&-‘&X 83

84

R.C. VELLORE. D.L. OLSON

2. PROBLEM

BACKGROUND

The company is a leading contractor executing works in the area of roads, housing projects, industrial buildings, airports, tunnels, underpasses, etc. The design drawings needed for the construction are provided by a consultant working for the client. These drawings need to be recast in a manner suitable for use by project construction staff and later for obtaining payments from the client. These additional sets of drawings are produced by a team of draftsmen. A few years ago the government, a major client, issued a directive that all drawings should be in magnetic form and be produced by computer aided design and drafting (CADD) equipment. A transition period was allowed during which both consultants and contractors could change over from a manual to the CADD set up. Being a leading player in the contracting business, the company decided to introduce CADD technology, train people and move into a production environment within the changeover period allowed by the government. During the transition, some consultants continued to submit design drawings in hard copy format. Thus, the design drawings had to be re-input by the company at its own expense and then translated for use by the project staff. The CADD department was started with a minimum configuration consisting of: A state of the art graphics workstation and a low-end mini-computer model manufactured by a leading CADD vendor. Early objectives were: (1) create awareness of CADD in the company; (2) undertake small projects and treat them as a period of learning; and (3) ensure that the investment in hardware and software could be integrated with the final full scale system selected by the company. The Case A CADD production environment in a contracting company involves creating a large number of shop drawings and as-built drawings. Shop drawings are translations of current plans according to project schedules and consultant design drawings, that can be used by project staff in their construction activity. Depending on nature of the project and its size, required shop drawings could run anywhere from tens to hundreds or more. Once the project enters the finishing stages, another set of drawings, called as-built, are produced to help the company get payments from the client. The client releases payments to the contractor after verifying the as-built drawings and making sure that they conform to the initial design plus any modifications intimated formally by them. Thus, the contractor is involved in the production of a large number of drawings during a project’s construction phase. The end-user, putting forth his case for scanning equipment to augment the initial start-up CADD environment, focused on three aspects: (1) manpower; (2) time; and (3) hardware and software price. The scanner would assist in inputting hard copy drawings submitted by clients into the machine much faster than would be possible manually. The reduction of manpower costs was estimated to be 3.41. Additionally, productivity improvement was estimated to be 6 times or better over manual operations. Given these enormous savings in manpower costs and time, the end-user felt that the scanner would pay for itself many times over. Although the scanning equipment was available from the vendor of an earlier purchased machine, the end-user recommended another vendor whose prices were lower. Some of the factors not considered by the end-user were: Maintenance of the scanning equipment; reliability of the equipment and its subsequent effect on productivity; and vendor support. 3. THE

AHP

ANALYSIS

A hierarchy of criteria considered in the decision was developed. Estimated cost of alternative systems was of course important. Other qualitative features need to be considered as well. The factors contributing to EUC success (Cheney et al. [8]; Rivard and Huff [2]) can be classified into the following major categories: DP/MIS interaction factors, tool (hardware/software) perceptions, adaptability to change, and attitudes. In the past the effectiveness of an IS has been measured by the surrogate User Information Satisfaction (UIS) (Bailey & Pearson, [9]). UIS as an IS instrument has been validated and applied by several researchers in the past (Ives et al. [lo]; Doll & Torkzadeh [ll]). Th e scales associated with UIS in these studies have been investigated

85

An AHP application

and those relevant include: DP/MIS

to the broad

EUC classifications

mentioned

above have been chosen.

These

Interaction Factors:

(1) Relationship with DP/MIS staff (2) Means of input/output with DP/MIS (This relates to the area of EUC data exchange CIS) (3) Competition with DP/MIS (C oncerns over power and responsibility) (4) Timeliness of output (5) Vendor support (Standardization of hardware and software) (6) Training end-users

with

Tool Perceptions: (1) (2) (3) (4) (5) (6)

Confidence in systems Users’ understanding of systems Response/turnaround time Volume of output (Impact of new applications Job effects (Impact on job performance) Flexibility of system

on the overall system)

Adaptability to Change: (1) Technical competence (Of end user) (2) Personal control of EUC systems (3) Computer knowledge (Of end user) Attitudes: (1) Environment (General office attitude (2) Top management support (3) Personal (Psychological attitude)

toward

EUC)

Note that almost all of these factors are qualitative. One would expect end-users to have their view of interaction factors, and the DP/MIS department to have a different view. The model we propose would allow each organizational actor or group to make their own assessment of of organizational performance on those factors. The end user would evaluate the effectiveness tool performance, adaptability to change, and attitudes. We would expect top management (or the managerial level faced with a particular decision) to reconcile expected differences in perceived organizational performance, and to weigh benefits against the cost of providing them. This would enable the decision maker to consider not only cost factors, but to identify problems in computer support provided end users, as well as burdens on the DP/MIS department. Further, the model could be used to evaluate new end user proposals by evaluating the expected impact on both quantitative and qualitative factors. Project proposals to improve performance on factors where current performance is unacceptable could be weighed against their cost. Following these classifications of qualitative factors, an analysis was conducted for the case. A consultant conducted the analysis, and used AHP rating relative advantages from the perspective of the different groups involved. In addition to cost, the other four factors were the impact on interaction with the current system, the development of new CADD tools to effectively aid company operations, the impact of change on personnel, and the impact on personnel attitudes. An overall rating of these five factors was made from the perspective of top management. Then, the relative proportion of impact due to end user computing (EUC) and data processing/management information systems operations (DP/MIS) was made for each of the four qualitative factors. Each

86

R.C. VELLORE, D.L. OLSON OVERALL

I COST

I INTERACTION EUC

VALUE

EUC

RELATIONSHIP

CONFIDENCE

MEANS of I/O

UNDERSTANDING

COMPETITION

TURNAROUND

TIMELINESS VENDOR SUPPORT END-USER TRAIN DP/MIS

SUPPORT

PERSONAL

PERSONNEL

CONTROL COMPUTER KNOWLEDGE

FLEXIBILITY DP/MIS

COMPETITION

TURNAROUND

TRAIN

TOP MGMT

COMPETENCE

VOLUME

UNDERSTANDING

END-USER

ENVIRONMENT

TECH

JOB EFFECTS

MEANS of I/O

SUPPORT

EUC

EUC

TIME

CONFIDENCE

VENDOR

ATTITUDES

CHANGE

OUTPUT

RELATIONSHIP

TIMELINESS

I

I

I TOOLS

DP/MIS

DP/MIS TECH

TOP MGMT

PERSONAL

SUPPORT

CONTROL

TIME OUTPUT

ENVIRONMENT

COMPETENCE

PERSONNEL

COMPUTER

VOLUME

KNOWLEDGE

JOB EFFECTS FLEXIBILITY

Top management provided the relative importance of the five major criteria. End User Computing and DP/MIS

relative emphasis for each of the four qualitative criteria (Interaction, Tools, Change,

and Attitudes) were also evaluated by top management. Then the relative importance of subfactors below each of these four qualitative criteria were rated from the perspectives of both End User Computing and DP/MIS. Finally, the performance of each ahernative decision (system with scanning and system without scanning) on each of these eighteen subcriteria were evahrated from the perspective of End User Computing as well as from the perspective of DP/MIS. Figure 1. Heirarchy of factors.

of these factors were then analyzed in greater depth, with relative impact considered independently. Figure 1 presents the hierarchy of objectives.

on EUC and DP/MIS

Two alternative systems were considered, after screening for technical capability, vendor support, and compatibility with existing systems. Alternative 1 included scanning capability, expediting electronic development of existing drawings created manually. Alternative 2 involved less investment, but did not have scanning capability. The hierarchy is presented in the appendix. Cost estimates were developed for the life cycle of the project. Cost categories considered included hardware and software acquisition expenses, personnel costs, and costs of operating each system. A common time frame reflecting equipment life expectency was used. Because AHP considers the ratio of relative contribution to value, the ratio of these cost estimates was used to identify relative alternative performance. Interaction with the current system was evaluated on six subfactors. These subfactors were the relative impact on the relationship between end users and the central DP/MIS group, the impact on input/output operations, competitive advantage acquired, impact on the time required to create or reproduce drawings, vendor support, and end user training. As with the other three

87

An AHP application Evaluations by top management OVERALL

VALUE COST

INTERACTION

1

COST INTERACTION TOOLS

TOOLS

CHANGE

ATTITUDES

3

2

7

3

1

113 1

2 5

l/3 3

1

112 1

CHANGE ATTITUDES a9444

.29085

.05683

.15cQO

EUC

33333

.50000

.16667

.66667

DP/MIS

A6667

.50000

.83333

.33333

40788

eigen vector

consistency index = .0498 RELATIVE

IMPORTANCE

Figure 2. Top level pairwise comparisons.

non-cost factors, pairwise comparison evaluations were conducted from the perspective of end user operations as well as from the DP/MIS perspective. Tool perceptions were subdivided into six subelements. Confidence in systems reflected the perceived accuracy of the alternative systems to produce quality output. Understanding of output reflected the ability of the system to generate output that users would understand. Turnaround time referred to the amount of time between job submission and user receipt of output. Output volume considered the impact of generated output on operations. Job effects reflected the impact of the proposed systems on the ability of end users to perform their job effectively. Flexibility of the system considered the ability to adjust the system to user or organizational operations. As with the other noncost factors, these subelements were evaluated with respect to both end user and DP/MIS perceptions. Adaptability to change considered three aspects. Technical competence focused on the ability of end users to understand the new technology. Personal control referred to the ability of individual end users to have control over their system operations. The last subelement in this group was the degree of end user computer knowledge required to operate the system. The impact of the proposed alternative systems on attitudes was the last factor considered. The expected impact on the end user and DP/MIS environment was included, as well as the amount of top management support and attitude of personnel. 4. PAIRWISE

COMPARISONS

The ratio of relative importance of the five primary factors was obtained through pairwise comparisons. Cost was considered the most important factor, and was rated as moderately more important than interaction and attitudes, between moderately more important and equivalent to tools, and having a very strong relative importance with respect to change. Tools were rated as essentially more important than interaction factors and change factors, and moderately more important than attitude factors. Attitude factors were rated as moderately more important than interaction factors, and slightly more important than change factors. Interaction factors were rated as slightly more important than change factors. These pairwise comparisons yielded a normalized set of ratio weights: Overall value = .40788 COST

+ .09444 INTERACTION

+ .29085 TOOLS HCM15:7-G

+ .05683 CHANGE

+ .15000 ATTITUDES.

R.C. VELLORE, D.L. OLSON INTERACTION

weight .09444

End-User weight 33333 system

with scanning

RELATICNSHIP

.06580

.33333

.00069

a6667

.00138

MEANS of I/O

.18458

.759cJo .00436

.25660

.00145

COMPETITION

.17062

.33333

.00179

66667

.00358

TIMELINESS

.25648

.83333

.00673

.16667

.00135

VENDOR

.16909

.50990

.00252

56996

.00252

.16243

.33333

.00170

66667

.00341

SUPPORT

END-USER TRAINING subtotals TOOLS

system

with scamkg

.01770

.01369

weight .29085

End-User weight .50096 CONFIDENCE

.15747

.66667

.01527

33333

.00763

UNDERSTANDING

.05741

.50990

.00418

.59cm

.00418

TURNAROUND

.12652

.a3333

.01533

.16667

.00307

.07933

.75660

.00866

.25099

.00280

OUTPUT

TIME

VOLUME

JOBEFFECTS

.36169

.66667

.03507

33333

.01753

FLEXIBILITY

.21757

.75690

.02373

.25069

.00701

subtotals

.10224

CHANGE

.04321

weight .05683

End-User weight .16667 TECH COMPETENCE

.25838

.66667

.00163

33333

.00082

PERSONAL

.63699

.75990

.00452

.25066

.00151

.16473

.75090

.00074

.25069

.00025

COMPUTER

CONTROL KNOWLEDGE

subtotals

.00689

ATTITUDES

.00258

weight .15000

End-User weight 66667 ENVIRONMENT

.36900

.66667

.02060

33333

.01030

TOP MGMT SUPPORT

.58155

.66667

.03877

33333

.01930

PERSONNEL

.16945

.75990

.00821

.25066

-00274

subtotals

a06758

.03243

End-User total scores

.19450

.09191

(Final product of weights given in bold) Figure 3. Evaluations of Alternative Performance on each subcriterion-End Perspective.

User

The consistency index for this set of pairwise comparisons was .0498, which is less than the test limit of .112 for five factors. This indicates acceptable consistency. Pairwise comparisons were made comparing the relative importance of interaction, tools, change, and attitude factors with respect to impact on end user perceptions and on DP/MIS perceptions. It was expected that these two groups would have different perceptions of the impact of the proposed system on operations, and that each group would rate relative importances differently. Decision impact on DP/MIS operations was rated as twice as important as on EUC operations with respect to interaction factors. Impact on tool factors was rated as equal for both groups. Impact on change factors for DP/MIS was rated as five times as strong as on EUC. The impact on attitudes for EUC was rated as double that on DP/MIS. Figure 2 presents the

An AHP application INTERACTION DP/MIS

weight .09444

weight .66667 system

system

with scanning

with scanning

RELATIONSHIP

33595

66667

.01410

x3333

.00705

MEANS of I/O

.12694

33333

.00266

.66667

.00538

COMPETITION

.11662

66667

.00489

33333

.00245

TIMELINESS

.17040

.66667

.00715

33333

.00858

VENDOR SUPPORT

.13483

33333

.00288

.66667

.00566

END-USER TRAINING

.11526

.75000

.00544

.25000

.00181

subtotals TOOLS

.03707

.02588

weight .29085

DP/MIS

weight .50000 CONFIDENCE

.14839

.66667

.01439

33333

.00719

UNDERSTANDING

.06488

.50000

.00472

.50000

.00472

TURNAROUND

.26583

.75000

.02899

.25000

.00967

.36328

.75000

.03062

.25000

.01221

JOB EFFECTS

.03943

.33333

.OOlQl

66667

.00382

FLEXIBILITY

.11819

.66667

.01146

33333

.00572

OUTPUT

TIME

VOLUME

subtotals

10109

CHANGE

.04433

weight .05683

DP/MIS

weight .83333 TECH COMPETENCE

.64833

.66667

.02047

33333

.01023

PERSONAL

.12202

.66667

.00385

33333

.00193

.22965

.66667

.00725

33333

.00863

COMPUTER

CONTROL KNOWLEDGE

subtotals

.03157

ATTITUDES DP/MIS

.01679

weight .15000

weight .33333 ENVIRONMENT

.2Q696

.66667

.OOOQO

33333

.00495

TOP MGMT SUPPORT

.53961

.66667

.01799

33333

.00890

PERSONNEL

.16342

.66667

.00545

33333

.00272

subtotals DP/MIS

89

total scorea

.03334

.01666

.20307

.10273

(Final product of weights given in bold) Figure 4. Evaluations of alternative performance on each subcriterion-DP/MIS perspective.

pairwise comparisons of top level factors, as well as relative importances of EUC and DP/MIS perspectives for each of the top level qualitative factors. Detailed evaluations of subfactors was conducted from the perspective of EUC as well as from the perspective of DP/MIS. The matrices of pairwise comparisons for this step are given in the appendix. Figure 3 presents the weight development for subfactors from the EUC perspective, as Figure 4 does from the DP/MIS perspective. Also included are the contributions to total score for each of the alternative systems. From the EUC perspective, the system with scanning had a ratio advantage of 2.12 on qualitative factors over the system without scanning (.19450/.09191). This ratio was 1.98 from the DP/MIS perspective.

R.C. VELLORE, D.L. OLSON

90 COST RATIOS

Life cycle costs of Alternative with scamkg

cost is 1.68108 greater than

Alternative without scamdng Normalized weights are therefore: Alt-tive

with scanning

.37298

Alternative

without scanning

.62702

FINAL

COMPARATIVE

RESULTS: Weight

Alternative

Alternative

with scenning

without scanning

(EUC & DP/MIS COST

‘INTERACTION TOOLS

.29085

CHANGE

.05683

ATTITUDES

TOTAL

.40788

.15213

.25575

EUC

.33333

.03148

.01779

.01369

DP/MIS

66667

.06296

.03707

.02588

EUC

.50000

.14543

.10224

.04321

DP/MIS

.50000

.14543

.10109

.04433

EUC

.16667

.00947

.00689

.00258

DP/MIS

.83333

.047x

.03157

.01579

EUC

.66667

.lOOOO

.06758

.03243

DP/MIS

33333

.05000

.03334

.01666

.54970*

.45032

.40788 .09444

.15000

1.0

scores from following pages)

1.0

Figure 5. Development of final scorea.

The last step of the AHP procedure was to use pairwise comparisons of the relative advantage of the two alternative systems on each factor. Figure 5 presents the final scores. As discussed above, the cost estimates for the two alternative systems were included by obtaining the ratio of costs, with the most attractive alternative receiving this ratio as a relative advantage. This analysis resulted in identification of the ratio of relative advantage of alternative I (the system with scanning capability) over alternative 2 (the system without scanning capability) of .54970 to .45032 (implying alternative 1 is 1.22 as valuable relative to cost as alternative 2). This analysis clearly shows an overall advantage for system 1, and the system with scanning capability was recommended. 5. CONCLUSIONS The use of AHP in this application provided a means to evaluate available CADD alternatives considering all factors deemed important in the decision. Because two distinct groups, with different perceptions of value, were involved, the pairwise comparisons were conducted from the perceptions of both end users and the central DP/MIS department. These groups were given differential weights of importance for different hierarchy elements, depending upon top management’s perceived importance of each factor on these two groups. Cost elements were estimated on a monetary unit scale, and thus did not require pairwise comparisons within cost subelements. The relative cost advantage of system 2 over system 1 was included in the overall AHP analysis through the top level pairwise comparisons of factors. Analytic hierarchy process enabled a consistent and thorough study of all factors involved in this decision. The decision to automate work activities, such as the adoption of computer aided design and drafting, provides organizations the opportunity to harness a highly valuable technological capability. Cost analysis alone will not adequately support this decision, because the potential benefits (and, as in this case, future requirements) are not easily quantifiable in monetary terms. Cost estimation was included in the analysis. As was demonstrated in this example, AHP easily supports including cost terms, as well as reflecting other factors of importance. Through identification of the relative ratio importance of factors, AHP provides a sound methodology to support complex decision making.

91

An AHP application REFERENCES

1. T. G uimaraes and V. Ftamanujam, Personal computing trends and problems: An empirical study, Managemenl Informalion Systems Quarterly 10:2, 179-187 (1986). 2. S. Rivard and S.L. Huff, Factors of success for end-user computing, Communications of ihe ACM 31:5, 552-561 (1988). 3. RI. Benjamin, Information technology in the 1980s: A long range planning scenario, Management Informalion Syslems Quarterly 6:2, 1131 (1982). 4. E.R. Greenberg, The rise of end users, Management Review 78:9, 57-90 (1989). 5. P. Sawyer, Drawings on the move, The Chemical Engineer 30:2, 30-32 (1989). 6. R.N. Stover, Improved scanners challenge manual digitizers, Machine Design, 151-155 (April 21, 1988). 7. T.L. Saaty, A scaling method for priorities in b.ierarchicalstructures, Jovmal of Malhemaiical Pq~hology 15, 234-281 (1977). 8. P.H. Cheney, R.I. Mann and D.L. Amoroso, Organizational factors affecting the success of End-User cornputing, Journal of Management Informalion Syaiems 3:1, 65-80 (1986). 9. J.E. Bailey and S.W. Pearson, Development of a tool for measuring and analyzing computer user satisfaction, Management Science 19:5, 530-545 (1983). 10. B. Ives, M.H. Olson and J.J. Baroudi, The measurement of user information satisfaction, Communicafions of the ACM 26:10, 785-793 (1983). 11. W.J. Doll and G. Torkzadeh, The measurement of end-user computing satisfaction, Management Znformation Systems Quarlerly 12:2., 259-273 (1988).

APPENDIX INTERACTION END-USER

PERSPECTIVE Relationship 1

Relationship M-

of I/O

I/O

Competition

Timeliness

Vendor

l/2 l/2

l/3 1

l/2 314

l/4 2

1

l/2

314

1

l/3 1

Competition Timeliness

1

Vendor support Training End-Users eigen vector

.06580

Training

2

2

1

314 1

.18458

.17062

.25648

.16009

.16243

I/O 4

Competition

Timeliness

Vendor

Training

2

3

2

3

1

2

l/3

314

2

1

l/2

314

2

1

314

1

314 1

.13483

.11586

consistency index = .0685 DP/MIS

PERSPECTIVE Relationship

Relationship

1

Means of I/O Competition Timeliness

1

Vendor support Training End-Users eigen vector

33595

.12694

consistency index = .1184

i .124 limit for six factors

.11662

.17040

92

R.C. VELLORE, D.L. OLSON TOOL

PERCEPTIONS

END-USER

PERSPECTIVE Confidence

Understanding

Response

Volume

Effects

1

2 1

2

3

l/2

l/3

l/2

l/3

l/4

l/4

1

2

l/3

1

1

l/5 1

l/3 3

Confidence in systems User understanding

Flexibility

of output Response/Turnaround Volume of output Job effects System flexibility eigen vector

1 .15747

.05741

.12652

.07933

36169

.21757

Confidence

Understanding

Response

Volume

Effects

Flexibility

1

2

l/3

l/3

5

2

1

l/5

l/5

2

l/2

1

l/2

5

2

1

6

3

1

l/4 1

.03943

.11819

consistency index = .0913 DP/MIS

PERSPECTIVE

Confidence in systems User understanding of output Response/Turnaround Volume of output Job effects System flexibility eigen vector consistency index = .0913

.14839

.06488

.26583

.36328

An AHP application ADAPTABILITY

CHANGE

TO

END-USER

PERSPECTIVE COMPETENCE

TECHNICAL PERSONAL

COMPETENCE

1

CONTROL

COMPUTER

93

CONTROL 113 1

KNOWLEDGE

eigen vector

KNOWLEDGE 3 5 1

.25838

m473

consistency index = .0193 DP/MIS

PERSPECTIVE

TECHNICAL

COMPETENCE

COMPETENCE PERSONAL

1

CONTROL

COMPUTER

CONTROL

3

1

Ii2

KNOWLEDGE

eigen vector

KNOWLEDGE

5

1 .64833

.12202

.22965

consistency index = .0018

ATTITUDES END-USER

PERSPECTIVE ENVIRONMENT

ENVIRONMENT TOP MANAGEMENT

1 SUPPORT

TOP SUPPORT 112 1

PERSONNEL 3 5 1

PERSONNEL eigen vector

.30900

.58155

.10945

consistency index = .0018 DP/MIS

PERSPECTIVE ENVIRONMENT

ENVIRONMENT TOP MANAGEMENT

1 SUPPORT

TOP SUPPORT

PERSONNEL 2

112 1

3

.53961

.16342

PERSONNEL eigen vector consistency index = .0046

.29696

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