| Literature DB >> 31827743 |
Abstract
In this study, a fuzzy AHP-VIKOR method is presented to help decision makers (DMs), especially physicians, evaluate and rank intervention strategies for influenza. Selecting the best intervention strategy is a sophisticated multiple criteria decision-making (MCDM) problem with potentially competing criteria. Two fuzzy MCDM methods, fuzzy analytic hierarchy process (F-AHP) and fuzzy VIsekriterijumska optimizacija i KOmpromisno Resenje (F-VIKOR), are integrated to evaluate and rank influenza intervention strategies. In fuzzy AHP-VIKOR, F-AHP is used to determine the fuzzy criteria weights and F-VIKOR is implemented to rank the strategies with respect to the presented criteria. A case study is given where a professor of infectious diseases and clinical microbiology, an internal medicine physician, an ENT physician, a family physician, and a cardiologist in Turkey act as DMs in the process.Entities:
Year: 2019 PMID: 31827743 PMCID: PMC6885823 DOI: 10.1155/2019/9486070
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Fuzzy AHP, fuzzy VIKOR, and fuzzy AHP-VIKOR applications.
| Fuzzy AHP applications | (i) Selection of concepts in an NPD environment [ |
| (ii) Evaluation of machine tools in a manufacturing system [ | |
| (iii) Evaluation of notebook computers for buyers [ | |
| (iv) Evaluation of disassembly line balancing solutions [ | |
| (v) Selection of power substation locations [ | |
| (vi) Selection of thermal power plant locations [ | |
| (vii) Selection of biodiesel blend for IC engines [ | |
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| Fuzzy VIKOR applications | (i) Water resources planning [ |
| (ii) Evaluation of the vulnerability of the water supply to climate change and variability in South Korea [ | |
| (iii) Material selection in an engineering application [ | |
| (iv) Reverse logistics [ | |
| (v) Site selection in waste management [ | |
| (vi) Evaluation of hospital services in Taiwan [ | |
| (vii) Selection of CNC machine tools [ | |
| (viii) Evaluation of schools' academic performance [ | |
| (ix) Selection of green supplier development programs [ | |
| (x) Review papers about VIKOR and fuzzy VIKOR applications [ | |
| (xi) Selection of a managed security service provider [ | |
| (xii) Selection of measures for prevention and reduction of “smog” (smoke and fog) in Pakistan [ | |
| (xiii) Risk assessment of China-Pakistan fiber optic project (CPFOP) [ | |
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| Fuzzy AHP-VIKOR applications | (i) Selection of the best renewable energy alternative and the best energy production site for Istanbul [ |
| (ii) Selection of machine tool alternative for the manufacturing sector [ | |
| (iii) Evaluation of the performance levels of Turkish banks registered in Borsa Istanbul (AHP and F-VIKOR) [ | |
| (iv) Ranking the financial performance of several Iranian companies [ | |
| (v) Evaluation of performance of Iranian cement firms (F-AHP and VIKOR) [ | |
| (vi) Selection of pipe material in sugar industry (F-AHP and VIKOR) [ | |
| (vii) Evaluation of busses for public transportation [ | |
| (viii) Selection of the best knowledge flow practicing organization [ | |
| (ix) Evaluation of compliant polishing tool (AHP and F-VIKOR) [ | |
Linguistic terms and TFNs for the evaluation of criteria in F-AHP.
| Linguistic terms | Triangular fuzzy number (TFN) |
|---|---|
| Absolutely strong (AS) | (2, 5/2, 3) |
| Very strong (VS) | (3/2, 2, 5/2) |
| Fairly strong (FS) | (1, 3/2, 2) |
| Slightly strong (SS) | (1, 1, 3/2) |
| Equal (E) | (1, 1, 1) |
| Slightly weak (SW) | (2/3, 1, 1) |
| Fairly weak (FW) | (1/2, 2/3, 1) |
| Very weak (VW) | (2/5, 1/2, 2/3) |
| Absolutely weak (AW) | (1/3, 2/5, 1/2) |
Linguistic terms and TFNs for the ratings of alternatives in F-VIKOR.
| Linguistic terms | Triangular fuzzy number (TFN) |
|---|---|
| Very poor (VP) | (0, 0, 1) |
| Poor (P) | (0, 1, 3) |
| Medium poor (MP) | (1, 3, 5) |
| Fair (F) | (3, 5, 7) |
| Medium good (MG) | (5, 7, 9) |
| Good (G) | (7, 9, 10) |
| Very good (VG) | (9, 10, 10) |
Evaluation criteria for influenza intervention strategies.
| C1 | Effectiveness (reduction of incidence of cases) |
| C2 | Lack of health side effects |
| C3 | Cost-effectiveness |
| C4 | Feasibility and timing (minimum delay before results) |
| C5 | Public acceptance |
| C6 | Equity and availability (proportion of population benefitting) |
| C7 | Applicability (easiness and minimum complexity) |
| C8 | Lack of unintended effects about work and social life |
5 DMs' pairwise comparison of evaluation criteria.
| C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | |
|---|---|---|---|---|---|---|---|---|
| C1 | E | AS | VS | VS | AS | SS | VS | FS |
| E | AS | FS | VS | VS | SS | VS | VS | |
| E | E | FS | VS | SS | E | E | SS | |
| E | VS | E | SW | VW | E | SW | E | |
| E | AS | S | VS | VS | E | E | SS | |
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| C2 | E | FS | VS | FS | FS | FS | FS | |
| E | FS | FS | SS | SS | SS | E | ||
| E | FS | SS | AS | SW | FW | SW | ||
| E | VS | SS | SS | SS | E | FS | ||
| E | FS | FS | AS | SS | FS | FS | ||
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| C3 | E | FS | VW | FS | E | E | ||
| E | FS | SS | FS | E | FS | |||
| E | E | VS | E | SW | VW | |||
| E | FS | SW | E | E | FS | |||
| E | SS | FW | SS | E | E | |||
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| C4 | E | FW | FS | E | E | |||
| E | SW | VS | SS | E | ||||
| E | SS | E | SS | FW | ||||
| E | SW | SW | SW | SW | ||||
| E | SW | FS | E | E | ||||
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| C5 | E | VS | FS | FS | ||||
| E | AS | FS | VS | |||||
| E | VS | VS | VS | |||||
| E | FW | FS | FS | |||||
| E | VS | VS | SS | |||||
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| C6 | E | E | E | |||||
| E | SS | E | ||||||
| E | E | VW | ||||||
| E | FS | FS | ||||||
| E | E | E | ||||||
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| C7 | E | E | ||||||
| E | SS | |||||||
| E | E | |||||||
| E | VS | |||||||
| E | E | |||||||
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| C8 | E | |||||||
| E | ||||||||
| E | ||||||||
| E | ||||||||
| E | ||||||||
Fuzzy evaluation matrix for the criteria weights ().
| C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | |
|---|---|---|---|---|---|---|---|---|
| C1 | (1.000, 1.000, 1.000) | (1.700, 2.100, 2.500) | (0.900, 1.200, 1.500) | (1.334, 1.800, 2.200) | (1.280, 1.600, 2.034) | (1.000, 1.000, 1.200) | (1.134, 1.400, 1.600) | (1.100, 1.300, 1.700) |
| C2 | (0.478, 0.540, 0.634) | (1.000, 1.000, 1.000) | (1.100, 1.600, 2.100) | (1.100, 1.400, 1.900) | (1.400, 1.700, 2.200) | (0.934, 1.100, 1.500) | (0.900, 1.134, 1.500) | (0.934, 1.300, 1.600) |
| C3 | (0.480, 0.568, 0.734) | (0.480, 0.636, 0.934) | (1.000, 1.000, 1.000) | (1.000, 1.300, 1.700) | (0.814, 1.034, 1.334) | (1.000, 1.200, 1.500) | (0.934, 1.000, 1.000) | (0.880, 1.100, 1.334) |
| C4 | (0.520, 0.600, 0.836) | (0.548, 0.768, 0.934) | (0.634, 0.802, 1.000) | (1.000, 1.000, 1.000) | (0.702, 0.934, 1.100) | (1.034, 1.400, 1.700) | (0.934, 1.000, 1.200) | (0.834, 0.934, 1.000) |
| C5 | (0.660, 0.880, 1.068) | (0.500, 0.694, 0.800) | (0.914, 1.200, 1.534) | (0.934, 1.100, 1.500) | (1.000, 1.000, 1.000) | (1.400, 1.834, 2.300) | (1.200, 1.700, 2.200) | (1.200, 1.600, 2.100) |
| C6 | (0.868, 1.000, 1.000) | (0.702, 0.934, 1.100) | (0.734, 0.868, 1.000) | (0.680, 0.768, 1.034) | (0.506, 0.680, 0.902) | (1.000, 1.000, 1.000) | (1.000, 1.100, 1.300) | (0.880, 1.000, 1.134) |
| C7 | (0.760, 0.800, 0.968) | (0.734, 0.968, 1.200) | (1.000, 1.000, 1.100) | (0.868, 1.000, 1.100) | (0.460, 0.602, 0.868) | (0.834, 0.934, 1.000) | (1.000, 1.000, 1.000) | (1.100, 1.200, 1.400) |
| C8 | (0.648, 0.834, 0.934) | (0.700, 0.802, 1.100) | (0.900, 1.068, 1.300) | (1.000, 1.100, 1.300) | (0.494, 0.668, 0.868) | (1.000, 1.134, 1.300) | (0.814, 0.900, 0.934) | (1.000, 1.000, 1.000) |
Fuzzy criteria weights determined with F-AHP.
| Criteria | Fuzzy weights |
|---|---|
| C1 | (0.116, 0.168, 0.242) |
| C2 | (0.094, 0.141, 0.214) |
| C3 | (0.079, 0.112, 0.164) |
| C4 | (0.074, 0.107, 0.152) |
| C5 | (0.093, 0.144, 0.212) |
| C6 | (0.079, 0.109, 0.149) |
| C7 | (0.082, 0.110, 0.152) |
| C8 | (0.079, 0.110, 0.153) |
5 DMs' evaluation scores of the influenza intervention alternatives with respect to each criterion.
| C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | |
|---|---|---|---|---|---|---|---|---|
| A1 | MG | G | F | G | VP | VG | VP | MG |
| G | G | MG | MG | MP | VG | G | G | |
| VG | VG | F | G | MP | F | G | G | |
| MG | MP | VG | F | G | MP | VG | G | |
| F | MG | MG | G | MP | G | G | G | |
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| A2 | VG | G | VG | VG | VG | VG | VG | G |
| G | G | VG | VG | G | VG | VG | G | |
| MP | F | F | MG | G | MG | VG | G | |
| G | P | P | G | F | MP | G | G | |
| G | G | G | MG | VG | F | MG | MG | |
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| A3 | MP | VG | VG | P | MP | F | VP | F |
| F | G | G | F | MP | VP | VP | MP | |
| VG | VG | VG | G | MP | P | VP | P | |
| G | VG | MP | F | P | F | F | VP | |
| VP | P | MP | MP | VP | P | P | VP | |
Fuzzy evaluation matrix () for the alternatives and fuzzy best values (FBV) and fuzzy worst values (FWV).
| C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | |
|---|---|---|---|---|---|---|---|---|
| A1 | (5.800, 7.600, 9.000) | (5.800, 7.600, 8.800) | (5.000, 6.800, 8.400) | (5.800, 7.800, 9.200) | (2.000, 3.600, 5.200) | (5.800, 7.400, 8.400) | (6.000, 7.400, 8.200) | (6.600, 8.600, 9.800) |
| A2 | (6.200, 8.000, 9.000) | (4.800, 6.600, 8.000) | (5.600, 7.000, 8.000) | (7.000, 8.600, 9.600) | (7.000, 8.600, 9.400) | (5.400, 7.000, 8.200) | (7.800, 9.200, 9.800) | (6.600, 8.600, 9.800) |
| A3 | (4.000, 5.400, 6.600) | (6.800, 8.000, 8.600) | (5.400, 7.000, 8.000) | (2.800, 4.600, 6.400) | (0.600, 2.000, 3.800) | (1.200, 2.400, 4.200) | (0.600, 1.200, 2.600) | (0.800, 1.800, 3.400) |
| FBV | (6.200, 8.000, 9.000) | (6.800, 8.000, 8.800) | (5.600, 7.000, 8.400) | (7.000, 8.600, 9.600) | (7.000, 8.600, 9.400) | (5.800, 7.400, 8.400) | (7.800, 9.200, 9.800) | (6.600, 8.600, 9.800) |
| FWV | (4.000, 5.400, 6.600) | (4.800, 6.600, 8.000) | (5.000, 6.800, 8.000) | (2.800, 4.600, 6.400) | (0.600, 2.000, 3.800) | (1.200, 2.400, 4.200) | (0.600, 1.200, 2.600) | (0.800, 1.800, 3.400) |
, , values.
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|---|---|---|---|
| A1 | (−1.744, 0.333, 4.200) | (0.019, 0.112, 1.691) | (−1.133, 0.150, 1.025) |
| A2 | (−1.841, 0.150, 3.379) | (−0.032, 0.141, 1.691) | (−1.050, 0.256, 1.050) |
| A3 | (−1.576, 0.747, 4.404) | (0.047, 0.168, 1.724) | (−1.164, 1.000, 1.000) |
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| (−.841, 0.150, 3.379) |
| |
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| (−1.576, 0.747, 4.404) |
| |
Fuzzy AHP-VIKOR results for influenza intervention strategies.
|
| Rank |
| Rank |
| Rank | |
|---|---|---|---|---|---|---|
| A1 | 0.632 | 2 | 0.360 | 1 | 0.085 | 1 |
| A2 | 0.356 | 1 | 0.370 | 2 | 0.171 | 2 |
| A3 | 0.969 | 3 | 0.407 | 3 | 0.639 | 3 |