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Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com
ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78
www.ijera.com 75|P a g e
A Model of Hybrid Approach for FAHP and TOPSIS with
Supporting by DSS
Maryam Mollaei
1
Department of Information Technology, SemnanUniversity, Semnan, Iran
2
Member of Sabhah Factory, Ghochan, Iran
Abstract
Nowadays major decision are introduced as a milestone in the life of organizations. The purpose of this paper is
to provide a hybrid model to decide the optimal way of solving problems based on fuzzy AHP (FAHP) and
prioritization techniques based on similarity to ideal solution (TOPSIS) and support the model using decision
support system.Theresults ofeachcasewill be consideredseparately and the result ofthe combinedapproachis
shown. The output of the combination approach can prove due to its high power. Application of our model to
different organizationsand companies show a fine improvement and fair agreement for output proficiency of the
systems.
Keywords:Fuzzy Analytical Hierarchy Process (FAHP), Multi–criteria Decision-making (MCDM), Technique
of prioritized by similarity to ideal solution (TOPSIS), Intelligenceand Decision support system.
I. Introduction
Making decision in the government
organizations is so important that some pundits call
the organization as the network of decisions. Today,
using technique of MCDM is so common that is such
a standard technique algorithm that there is some
interaction with decision makers in some of them.
MADM is in many cases in order to choose one
option from a limited number of options, need to sort
out its priorities in terms of benefits on each other,
which is usually done on the basis of certain criteria.
Thus position of each option is compared to other
options and, decision makers can insure superiority
from each option to select, prioritize and rank. Thus
providing a method that can rank as a result of
decisions based on condition of all criteria further,
and in addition had has higher reliability is
important.
II. Fuzzy Analytical Hierarchy Process,
(FAHP)
AHP introduced for the first time by Thomas L.
Saati (1980). This technique combines expert option
and evaluation, and complex decision-making
system to make a simple hierarchy. Then, the
evaluation method is used according to a scale to
determine the relative importance of paired
comparisons between each of the criteria [1-2].
In AHP dependence should be linear, from top
to bottom or vice versa. Ifthedependence was mutual,
means Weight of the criteria depend onalternatives
weigh andcriteria weightalsodependonweight, its
removed from the hierarchy and serves as a non-
linear system with feedback, that in this case, linear
systems cannot be rules and formals use
to calculate the weightof elements. Because
dependence is between parameters, ANP method
must be used.
Although this technique is evaluated qualities
and quantities indictor, and all the benefit that has,
includes some storage, like:
1. Basically, has been used in crisp decision
application
2. Scale unbalance judgment examine
3. Do not consider Unreliability consider in
individual judgment
4. Rating of this way is almost incorrect
5. Subjective judgment, selection and the decision-
makers are so important as a result
Moreover, AHP was not able to reflect human
thought (for example almost better, probably so bad
and etc) as a result in order to modeling such
uncertainly in human preference, fuzzy set
theory(which for first time was introduced officially
by professor Lotfizadeh to address the ambulation in
human thought) was combined with paired
comparisons-fuzzy analytical hierarchy as a
development of AHP-then the better result was
obtained (Ayang&Ozdemir).Thus in order to use the
advantages of both techniques (AHP & fuzzy) and
overcome to their weaknesses, Van Horn and
Pidriyzeused FAHP in analysis of issues for the first
time.
RESEARCH ARTICLE OPEN ACCESS
Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com
ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78
www.ijera.com 76|P a g e
Fig. 1.FAHP based on the comparisons options for
mutually carried out and for equality in terms of
decision-makers on option is selected.
III. Technique prioritized by similarity to
ideal solution(TOPSIS)
TOPSIS is one of the most easier and useful
technique for decisions that was mentioned by
Huang and Yun at 1981 for solving MADM
problems. This technique was described based on
this idea that the selectedoptionshould
betheshortestdistance to thepositiveideal solution and
negative solution is the farthest distance [2-4]. In
other words, positive ideal solution combines the
best value in the negative ideal solution[5].
The main disadvantage of TOPSIS, is failure to
provide weight and judgment review (see figure 2).
Thus, this technique require practice effectively that
set the relative importance of various indicators with
respect to the other objectives. As a result, need a
way to solve the huge vacuum.
Fig. 2.TOPSIS whit the shrinking of the positive
condition, desirability increase.
According to advantage of approach decision
compare with current technique ranking, the aim is to
provide methods by combining common decision –
making technique, Provide hybrid approach that is a
higher power and can solve the selection and ranking
problem optimally.Application of AHP due to the
limited capacity of human information processing
are significantly limited and the roof of paired
comparisons has arrived to seven plus minus two
(7∓2) [5-6]. TOPSIS technique can meet the need of
paired comparisons, and as a result capacity
constrains in the process is not dominant [7].
However, TOPSIS approach assumes that variable
inputs are accurate and are used as numerical data.It
is obviousthatmost ofthe
existingawarenessandknowledgeofthe real
worldarenot onlyaccurate,
butareimprecise.Theinaccuraciesand
ambiguitiesthatachieved variety of sources, such as
immeasurable information, incomplete information
andalsoinformationareunachievabledue toone of the
disadvantagesisTOPSIS [8].
ClassicaltechniquesofAHPdue toa lack of
accesstodecision-makersneedaccurate, is not
perfectto reflect thehumanmind. As a result linguistic
ariablesareconsideredinfuzzy numbersto describe
theinputs TOPSISandaccessto the needs ofdecision-
makersisuseful.
In fact, thehybrid approachcan besummed upin 4
steps as seen in figure 3.
1. FAHP uses hierarchical structure in calculating
the weight of each creation (according to expert )
2. Normalmatrixweightedaccording to
thevalueofsomeof theslightly criteriatakes shape
3. Positiveandnegativeidealsolutionsare defined.
4. Finally,the Euclidean distanceof each
optiontothesolutionis
calculatedaccordingtothedistanceandrelative
closenesstothe ideal
solutionoptionsconsideredtobethe bestjudge, and
thus the bestrating.
Fig. 3.The flowchart of combining of FAHP and
TOPSIS. The inputs of end-stage of topsis are weight
that calculate by FAHP.
IV. Expert systems
Expert systems are programmed system which
their databases of information that people make
decision about a particular subject on the base of
it.Moreachievementsin the field
ofartificialintelligence aredecision makingand
problem solving;themostexcellentexpert systemsare
included.In other words, the kindofartificial
intelligencetoreacha level ofexpertisethat can
bereplaced by aspecialistin a particular
fielddecisions, says expert system.
These systemsareefficient toolsoffera
specialstructurethathas beennsummarizedbythe
neatly database. Expert systems are one of the most
important branches and subsidiaries decision
Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com
ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78
www.ijera.com 77|P a g e
supports which contribute to human experts, and bye
simulating expert special thought help to decision
making process and decision making in organization.
DSSsystems are systemsthat combine
targetedanalytical modelwithoperational
dataformanagers whoare facedwithsituationsof semi-
structureddecisions. As result contribute to modeling
unstructured problem.
Someof the disadvantages ofDSS and expert
systems,
1. Limitations insome circumstances
2. Lack of any feeling about decision
3. The lack ofwidespreadvast knowledgebase,
because their knowledge Origin ofone or
moreparticularexpert
4. Lack ofCreativity
5. Humanresistanceto change
6. Failure in case of disorganization or interruption
systems
Fig. 4.Expert systemchart and relationship between
structural design and engineering specialist database
system.
V. Combination of FAHP - TOPSIS and
DSS
As was described, FAHP–TOPSIS hybrid
systems are the perfect solution for the analysis of
MCDM issues, Andthe eyes of
manypunditscangreatlyreducepossibleerrors. Butif
theDSSusedto support thedecisionrendered, theriskis
reducedtoa minimum.Itisonly ifexpert
systemsbenefitfrom theexperienceof expert and they
constantly update themselves. Whatthese systemsare
used, administratorscanchoose
awayofofferingsuperiorwayalsohelpbymodel.
VI. Hybrid approach is better or
combination approach?
FAHP approachshouldbe
designedquestionnairethat includeallof
binarycombinations.Ofcriteriapair wise
comparisonand options. So ifthe number
ofcomparisonsincreases,questionnaire will be longer.
Fornot making a mistake, the number
ofcomparisonsshouldbe enoughto includea
reasonablenumber ofcomparisons.Another point is
thatFAHPisbased onexpert opinion andonly ifit
issatisfiedthatexistin thepopulation ofa small number
ofexperts.Becausemany sample
donotneedtoconsider.
TOPSISapproachmore appropriate andeasierto
analyzeforbetterandfasterdecision making,
butproblemssuch as thelack ofweighting thecriteriato
be included.As a result,noneof these
isasfollowsabsolutely cannotrespondto
allappropriateorganizations.
VII. Results
In order to take advantage of the benefits of a
combined approach and offer an approach to the
above, the present study common methods of
decision making that weaknesses are offset each
other strengths, and to support decision-ideal positive
has been referred to the DSS system.
Inseveral studies, fusionof AHPandTOPSISis
thattheweighting of criteriaand sub-criteria can be
calculatedwith the helpofAHP, Then this weight to
be enjoying ranking of option in TOPSIS [9].
Mostfuzzy TOPSISmodeldoes not consider the
hierarchical structureof themulti-criteriaissues(the
main advantage ofPHP) andare not considered.After
collectingprimary and
secondarystandardsandahierarchyofcriteria,develope
dTOPSISmethodinfuzzyhierarchicalTOPSISin are
called, are usedto rank theoptions.
VIII. Conclusions
In this paper, I found thatin the case
ofsolutionsoroptionsveryclose to each other, ateach
otherorconfusingdecision-makers, expert
systemsandDSSutilizesartificial intelligenceto
choose the bestwaytohelp. Obviously,itmustbe borne
in mindthatthese systemsonlybe usedasdecision
support. Because Firstly,a computer systemwith all
their mightneverreplace
humanmultilateralthoughts,Seconddayeventwithcoun
tless varietyof manfacedwith the choice ofinfinite
variety, which despiteall theextensiveknowledge
base of thesystem, fromallaspects of theselectionis
notideal. As a result, human capacity should also be
considered. Researchon the bestapproach toselecting
the bestsolutioncontinues.
References
[1] Z. Ayagand R. G. Ozdemir, 2006, Fuzzy
AHP approach to evaluating machine tool
alternatives. Journal of intelligent
manufacturing ,17, pp. 179-190.
[2] P. Babicand L. Plazibit, 1998, Ranking of
enterprises based on multicriteria analysis.
International journal of production
economics, 56, pp. 29 – 35.
Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com
ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78
www.ijera.com 78|P a g e
[3] F. Chan, N. Kumar, M. Tiwari, 2007,
Global supplier selection, a fuzzy
approach.International journal of production
research.
[4] T. Chas and G. S.Liang , 2001, Application
of a fuzzy multi criteria decision making
model for shipping company performance
evaluation. Maritime policy and
management, 28 (4), pp. 375 – 392.
[5] E. Tolga and C. Kahraman, 2005, Operating
system selection using fuzzy replacement
process.International journal of production
economic, 97, pp. 89 – 117.
[5] M. Saremi, S. Mousavi and A. Sanayei,
2008, Tqm consultant selection in smes
with topsis under fuzzy environment.
[6] H. Shih, H. Shyur and C. H. Yen, 2002, An
extension of topsis for group decision
making . mathematical and computer
modelling , 45, pp.180 – 813.
[7] J. W. Wang and H. K. Cheng, 2009, Fuzzy
hierarchical topsis for supplier
selection.Applied soft computing, 9, pp.377
– 386.
[8] A. Sarrafizadeh and A. alipanahi ,
Information management systems.
[9] A. Gulati and M. Yasi, Decision support in
commodities investment, an expert system
application , industrial management and
pate system, 1994 , vol . 94 , pp . 56-65.
Maryam Mollaeireceived the B. Sc in IT from the
Semnan University, Iran in 2011. Her research
involves modeling AHP hierarchy for choosing
leader. Expert systemmodeland model simulation
methods. She is working on discovering of the
world’s mysteries and combining methods to achieve
new ways in engineering and managements
organizations.

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Hybrid FAHP TOPSIS Model with DSS Support

  • 1. Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78 www.ijera.com 75|P a g e A Model of Hybrid Approach for FAHP and TOPSIS with Supporting by DSS Maryam Mollaei 1 Department of Information Technology, SemnanUniversity, Semnan, Iran 2 Member of Sabhah Factory, Ghochan, Iran Abstract Nowadays major decision are introduced as a milestone in the life of organizations. The purpose of this paper is to provide a hybrid model to decide the optimal way of solving problems based on fuzzy AHP (FAHP) and prioritization techniques based on similarity to ideal solution (TOPSIS) and support the model using decision support system.Theresults ofeachcasewill be consideredseparately and the result ofthe combinedapproachis shown. The output of the combination approach can prove due to its high power. Application of our model to different organizationsand companies show a fine improvement and fair agreement for output proficiency of the systems. Keywords:Fuzzy Analytical Hierarchy Process (FAHP), Multi–criteria Decision-making (MCDM), Technique of prioritized by similarity to ideal solution (TOPSIS), Intelligenceand Decision support system. I. Introduction Making decision in the government organizations is so important that some pundits call the organization as the network of decisions. Today, using technique of MCDM is so common that is such a standard technique algorithm that there is some interaction with decision makers in some of them. MADM is in many cases in order to choose one option from a limited number of options, need to sort out its priorities in terms of benefits on each other, which is usually done on the basis of certain criteria. Thus position of each option is compared to other options and, decision makers can insure superiority from each option to select, prioritize and rank. Thus providing a method that can rank as a result of decisions based on condition of all criteria further, and in addition had has higher reliability is important. II. Fuzzy Analytical Hierarchy Process, (FAHP) AHP introduced for the first time by Thomas L. Saati (1980). This technique combines expert option and evaluation, and complex decision-making system to make a simple hierarchy. Then, the evaluation method is used according to a scale to determine the relative importance of paired comparisons between each of the criteria [1-2]. In AHP dependence should be linear, from top to bottom or vice versa. Ifthedependence was mutual, means Weight of the criteria depend onalternatives weigh andcriteria weightalsodependonweight, its removed from the hierarchy and serves as a non- linear system with feedback, that in this case, linear systems cannot be rules and formals use to calculate the weightof elements. Because dependence is between parameters, ANP method must be used. Although this technique is evaluated qualities and quantities indictor, and all the benefit that has, includes some storage, like: 1. Basically, has been used in crisp decision application 2. Scale unbalance judgment examine 3. Do not consider Unreliability consider in individual judgment 4. Rating of this way is almost incorrect 5. Subjective judgment, selection and the decision- makers are so important as a result Moreover, AHP was not able to reflect human thought (for example almost better, probably so bad and etc) as a result in order to modeling such uncertainly in human preference, fuzzy set theory(which for first time was introduced officially by professor Lotfizadeh to address the ambulation in human thought) was combined with paired comparisons-fuzzy analytical hierarchy as a development of AHP-then the better result was obtained (Ayang&Ozdemir).Thus in order to use the advantages of both techniques (AHP & fuzzy) and overcome to their weaknesses, Van Horn and Pidriyzeused FAHP in analysis of issues for the first time. RESEARCH ARTICLE OPEN ACCESS
  • 2. Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78 www.ijera.com 76|P a g e Fig. 1.FAHP based on the comparisons options for mutually carried out and for equality in terms of decision-makers on option is selected. III. Technique prioritized by similarity to ideal solution(TOPSIS) TOPSIS is one of the most easier and useful technique for decisions that was mentioned by Huang and Yun at 1981 for solving MADM problems. This technique was described based on this idea that the selectedoptionshould betheshortestdistance to thepositiveideal solution and negative solution is the farthest distance [2-4]. In other words, positive ideal solution combines the best value in the negative ideal solution[5]. The main disadvantage of TOPSIS, is failure to provide weight and judgment review (see figure 2). Thus, this technique require practice effectively that set the relative importance of various indicators with respect to the other objectives. As a result, need a way to solve the huge vacuum. Fig. 2.TOPSIS whit the shrinking of the positive condition, desirability increase. According to advantage of approach decision compare with current technique ranking, the aim is to provide methods by combining common decision – making technique, Provide hybrid approach that is a higher power and can solve the selection and ranking problem optimally.Application of AHP due to the limited capacity of human information processing are significantly limited and the roof of paired comparisons has arrived to seven plus minus two (7∓2) [5-6]. TOPSIS technique can meet the need of paired comparisons, and as a result capacity constrains in the process is not dominant [7]. However, TOPSIS approach assumes that variable inputs are accurate and are used as numerical data.It is obviousthatmost ofthe existingawarenessandknowledgeofthe real worldarenot onlyaccurate, butareimprecise.Theinaccuraciesand ambiguitiesthatachieved variety of sources, such as immeasurable information, incomplete information andalsoinformationareunachievabledue toone of the disadvantagesisTOPSIS [8]. ClassicaltechniquesofAHPdue toa lack of accesstodecision-makersneedaccurate, is not perfectto reflect thehumanmind. As a result linguistic ariablesareconsideredinfuzzy numbersto describe theinputs TOPSISandaccessto the needs ofdecision- makersisuseful. In fact, thehybrid approachcan besummed upin 4 steps as seen in figure 3. 1. FAHP uses hierarchical structure in calculating the weight of each creation (according to expert ) 2. Normalmatrixweightedaccording to thevalueofsomeof theslightly criteriatakes shape 3. Positiveandnegativeidealsolutionsare defined. 4. Finally,the Euclidean distanceof each optiontothesolutionis calculatedaccordingtothedistanceandrelative closenesstothe ideal solutionoptionsconsideredtobethe bestjudge, and thus the bestrating. Fig. 3.The flowchart of combining of FAHP and TOPSIS. The inputs of end-stage of topsis are weight that calculate by FAHP. IV. Expert systems Expert systems are programmed system which their databases of information that people make decision about a particular subject on the base of it.Moreachievementsin the field ofartificialintelligence aredecision makingand problem solving;themostexcellentexpert systemsare included.In other words, the kindofartificial intelligencetoreacha level ofexpertisethat can bereplaced by aspecialistin a particular fielddecisions, says expert system. These systemsareefficient toolsoffera specialstructurethathas beennsummarizedbythe neatly database. Expert systems are one of the most important branches and subsidiaries decision
  • 3. Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78 www.ijera.com 77|P a g e supports which contribute to human experts, and bye simulating expert special thought help to decision making process and decision making in organization. DSSsystems are systemsthat combine targetedanalytical modelwithoperational dataformanagers whoare facedwithsituationsof semi- structureddecisions. As result contribute to modeling unstructured problem. Someof the disadvantages ofDSS and expert systems, 1. Limitations insome circumstances 2. Lack of any feeling about decision 3. The lack ofwidespreadvast knowledgebase, because their knowledge Origin ofone or moreparticularexpert 4. Lack ofCreativity 5. Humanresistanceto change 6. Failure in case of disorganization or interruption systems Fig. 4.Expert systemchart and relationship between structural design and engineering specialist database system. V. Combination of FAHP - TOPSIS and DSS As was described, FAHP–TOPSIS hybrid systems are the perfect solution for the analysis of MCDM issues, Andthe eyes of manypunditscangreatlyreducepossibleerrors. Butif theDSSusedto support thedecisionrendered, theriskis reducedtoa minimum.Itisonly ifexpert systemsbenefitfrom theexperienceof expert and they constantly update themselves. Whatthese systemsare used, administratorscanchoose awayofofferingsuperiorwayalsohelpbymodel. VI. Hybrid approach is better or combination approach? FAHP approachshouldbe designedquestionnairethat includeallof binarycombinations.Ofcriteriapair wise comparisonand options. So ifthe number ofcomparisonsincreases,questionnaire will be longer. Fornot making a mistake, the number ofcomparisonsshouldbe enoughto includea reasonablenumber ofcomparisons.Another point is thatFAHPisbased onexpert opinion andonly ifit issatisfiedthatexistin thepopulation ofa small number ofexperts.Becausemany sample donotneedtoconsider. TOPSISapproachmore appropriate andeasierto analyzeforbetterandfasterdecision making, butproblemssuch as thelack ofweighting thecriteriato be included.As a result,noneof these isasfollowsabsolutely cannotrespondto allappropriateorganizations. VII. Results In order to take advantage of the benefits of a combined approach and offer an approach to the above, the present study common methods of decision making that weaknesses are offset each other strengths, and to support decision-ideal positive has been referred to the DSS system. Inseveral studies, fusionof AHPandTOPSISis thattheweighting of criteriaand sub-criteria can be calculatedwith the helpofAHP, Then this weight to be enjoying ranking of option in TOPSIS [9]. Mostfuzzy TOPSISmodeldoes not consider the hierarchical structureof themulti-criteriaissues(the main advantage ofPHP) andare not considered.After collectingprimary and secondarystandardsandahierarchyofcriteria,develope dTOPSISmethodinfuzzyhierarchicalTOPSISin are called, are usedto rank theoptions. VIII. Conclusions In this paper, I found thatin the case ofsolutionsoroptionsveryclose to each other, ateach otherorconfusingdecision-makers, expert systemsandDSSutilizesartificial intelligenceto choose the bestwaytohelp. Obviously,itmustbe borne in mindthatthese systemsonlybe usedasdecision support. Because Firstly,a computer systemwith all their mightneverreplace humanmultilateralthoughts,Seconddayeventwithcoun tless varietyof manfacedwith the choice ofinfinite variety, which despiteall theextensiveknowledge base of thesystem, fromallaspects of theselectionis notideal. As a result, human capacity should also be considered. Researchon the bestapproach toselecting the bestsolutioncontinues. References [1] Z. Ayagand R. G. Ozdemir, 2006, Fuzzy AHP approach to evaluating machine tool alternatives. Journal of intelligent manufacturing ,17, pp. 179-190. [2] P. Babicand L. Plazibit, 1998, Ranking of enterprises based on multicriteria analysis. International journal of production economics, 56, pp. 29 – 35.
  • 4. Maryam Mollaei Int. Journal of Engineering Research and Applications www.ijera.com ISSN: 2248-9622, Vol. 5, Issue 9, (Part - 2) September 2015, pp.75-78 www.ijera.com 78|P a g e [3] F. Chan, N. Kumar, M. Tiwari, 2007, Global supplier selection, a fuzzy approach.International journal of production research. [4] T. Chas and G. S.Liang , 2001, Application of a fuzzy multi criteria decision making model for shipping company performance evaluation. Maritime policy and management, 28 (4), pp. 375 – 392. [5] E. Tolga and C. Kahraman, 2005, Operating system selection using fuzzy replacement process.International journal of production economic, 97, pp. 89 – 117. [5] M. Saremi, S. Mousavi and A. Sanayei, 2008, Tqm consultant selection in smes with topsis under fuzzy environment. [6] H. Shih, H. Shyur and C. H. Yen, 2002, An extension of topsis for group decision making . mathematical and computer modelling , 45, pp.180 – 813. [7] J. W. Wang and H. K. Cheng, 2009, Fuzzy hierarchical topsis for supplier selection.Applied soft computing, 9, pp.377 – 386. [8] A. Sarrafizadeh and A. alipanahi , Information management systems. [9] A. Gulati and M. Yasi, Decision support in commodities investment, an expert system application , industrial management and pate system, 1994 , vol . 94 , pp . 56-65. Maryam Mollaeireceived the B. Sc in IT from the Semnan University, Iran in 2011. Her research involves modeling AHP hierarchy for choosing leader. Expert systemmodeland model simulation methods. She is working on discovering of the world’s mysteries and combining methods to achieve new ways in engineering and managements organizations.