Submitted:
31 May 2026
Posted:
02 June 2026
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Abstract
Keywords:
1. Introduction
- (i)
- A hybrid ARAS-H-IW approach coupling ARAS, hesitant fuzzy subsets, and inverse weight inference based on ordinal preference constraints.
- (ii)
- A complete and reproducible formalization of the processing flow: normalization, aggregation of hesitant evaluations, calculation of ARAS utilities, then inference of weights by constrained optimization with regularization.
- (iii)
- Strategies are being studied for aggregating preferences expressed by several experts, in the form of rankings, to be taken into account in the inference of IW weights.
- (iv)
- Procedures are provided for converting numeric or linguistic preferences into numerical hesitant sets that can be used by the ARAS-H method.
- (v)
- The proposed ARAS-H-IW framework was validated through a real-world case study in the Fez-Meknes region, using quantitative data provided by experts from the Regional Health Directorate of Fez-Meknes to assess its computational behavior, robustness, and ranking stability.
- (vi)
- Robustness analyses (deterministic sensitivity and Monte Carlo simulations) and rank agreement measures allow comparison of ARAS-H-IW to reference MCDM methods.
- (vii)
- Implementation of a reproducible web application that can be deployed by other regions of Morocco, or even other countries, not only for the problem of HW technology assessment, but also for other MCDM problems.
- (viii)
- Beyond the regional case study, the proposed framework is designed as an automated and auditable decision-support pipeline: data import, hesitant-fuzzy modeling, multi-expert rank aggregation, inverse weight inference, inter-method comparison, and Monte-Carlo robustness analysis are chained within a single reproducible application. This computational, cognitive-decision orientation is what makes the approach scalable to the larger, heterogeneous, and continuously updated datasets that regional and national healthcare-waste information systems are beginning to generate, positioning it within data-driven and cognitive decision-support for waste management rather than as a one-off numerical example.
2. Critical Positioning and Shortcomings
- (i)
- (ii)
- (iii)
2.1. Management and Treatment of Healthcare Waste
2.2. Multi-Criteria Methods and Uncertainty Management
2.3. Determining the Weights of the Criteria: Limitations of Existing Approaches
2.4. Contribution of ARAS-H-IW Relative to Existing Fuzzy-MCDM Variants
3. Proposed Methodology: Hesitant Fuzzy ARAS with Inverse Weight Inference
3.1. Hesitant Fuzzy Set Modeling
3.2. Fuzzy ARAS Method
3.3. IW Approach to Inverse Inference of Criteria Weights
3.3.1. Principle of the IW Approach
- w is the vector of inferred final weights used to produce the ARAS ranking.
- w0 is the a priori weight vector used in the inference method as the “reference weight”. In this study, we propose to calculate this weight using one of the objective weighting methods: BWM [20], CRITIC [21], or Entropy [24]. These weights therefore play the role of a “reasonable” starting point and regularization for the inference method.
3.3.2. Encoding of Expert Preferences
3.3.3. Optimization Problem: Regularization Towards w 0 and Penalization of Violations
- The term
- ▪ The sum ∑ξab imposes consistency with global preferences and constitutes the core of the inverse inference mechanism [30].
- ▪ The parameter α ∈ [0, 1] controls the trade-off: For values α close to 1: α → 1 favors proximity to w0, while for values close to 0: α → 0 gives maximum priority to respecting preferences P. For α = 0.5, this represents a choice that balances the two cases.
3.3.4. Algorithmic Procedure of the IW Approach
- Collecting rankings or overall comparisons from experts and converting them into P.
- Fixing ε: for an appropriate choice, it is recommended to choose a value between 10⁻⁴ and 10⁻³ and to choose α. Empirically, for an appropriate choice, choose a value between 0.4 and 0.6.
- Solve the quadratic program (11) to obtain the inferred weight vector w*.
- Apply ARAS with w* and compare the results to the reference methods TOPSIS, VIKOR, PROMETHEE, and EDAS on the same decision matrix.
- Finally, assess the stability of the ranking by controlled perturbation of the weights (e.g., centered Dirichlet draws) [30].
3.3.5. What Roles Do w and w0 Play in the Proposed Framework?
3.4. Integration of multiple expert rankings into the inverse inference of weights
3.4.1. Pairwise Preference Aggregation
- let the set of all consistent pairs (a,b) such that Aa precedes Ab in r(e),
- either only adjacent pairs, a more robust option in the face of noise and uncertainties.
3.4.2. Expert Inference Followed by Weight Aggregation
3.4.3. Preliminary Collective Ranking, Then Inference on Consensus
- ▪ Advantage: very readable presentation, with a single target ranking.
- ▪ Limitation: partial loss of information on the individual dispersion of judgments.
3.4.4. Robust Formulation: Minimizing the Worst-Case Scenario Disagreement
3.4.5. When to Use Which Option?
3.5. Complete Process of the Proposed ARAS-H-IW Methodology
- Construction of the decision matrix. Initially, a decision matrix X=[xij] is constructed, grouping together, for the study case of this paper, the performances of alternatives A1,…, A5 according to all criteria C1,…, C10 (see section 4.3). These criteria cover several complementary dimensions of the decision problem (economic, environmental, health and safety, social), in accordance with the analytical framework adopted.
- Normalization and uncertainty modeling. Performance is then normalized to make criteria comparable, explicitly distinguishing between cost and benefit criteria. To account for the imprecision and variability of expert judgments, the normalized evaluations are represented using hesitant fuzzy sets, allowing for the modeling of several plausible values for the same performance.
- Calculation of ARAS scores based on the normalized and weighted matrix. The ARAS method is applied. This step includes additive normalization and the calculation of weighted scores. If for each alternative Ai, as well as the degree of relative utility Ki, expressing the performance of each alternative relative to the ideal solution A0 . This phase provides a first provisional ranking.
- Inverse inference of weights under preference constraints. Unlike classical approaches based on entirely exogenous weights, the ARAS-H-IW methodology incorporates inverse inference of weights. The initial weights are adjusted towards an optimal vector w* by solving a constrained convex quadratic optimization program, so as to best respect the preferences or rankings expressed by the experts, while limiting excessive deviations from the reference weights w0.
- Final ranking, robustness analysis, and recommendations. Finally, the inferred weights are fed back into the ARAS model to produce the final ranking of the alternatives. This step is complemented by a sensitivity and robustness analysis, allowing for the evaluation of the stability of the results in the face of variations in weights or preferences and for the formulation of operational decision-making recommendations for decision-makers.
3.6. Bidirectional Passage Between Digital Representations and Hesitant Linguistic Values
3.6.1. Conversion of Numerical Values to Hesitant Fuzzy Sets
3.6.2. Conversion of hesitant linguistic values into numerical representations
3.6.3. Conversion of linguistic preferences with discrete-wavelength values to numerical fuzzy sets
| Language assessment | Discreet, blurry ensemble | H (normalized values) | S(H) | D(H) | X=S – λ×D |
|---|---|---|---|---|---|
| “Very Low (VL)” | {0.0, 0.1} | {0.0, 0.1} | 0.050 | 0.050 | 0.040 |
| "Low (L)" | {0, 1, 3} | {0.0, 1.0, 3.0} | 1.333 | 1.247 | 1.084 |
| “Moderate Low (ML)” | {1, 3, 5} | {1.0, 3.0, 5.0} | 3.000 | 1.633 | 2.673 |
| "Moderate (M)" | {3.5, 5, 7} | {3.5, 5.0, 7.0} | 5.167 | 1.431 | 4.881 |
| Hesitation between "ML" and "M" | {1, 3, 5} ∪ {3.5, 5, 7} | {1.0, 3.0, 3.5, 5.0, 7.0} | 3.900 | 2.074 | 3.485 |
| “Moderate High (MH)” | {5, 7, 9} | {5.0, 7.0, 9.0} | 7.000 | 1.633 | 6.673 |
| “High (H)” | {7, 9, 10} | {7.0, 9.0, 10.0} | 8.667 | 1.247 | 8.417 |
| “Very High (VH)” | {9, 10, 10} | {9.0, 10.0, 10.0} | 9.667 | 0.471 | 9.573 |
3.7. Implementation of the ARAS-H-IW Approach
4. Study case: Fez–Meknes Region
4.1. Positioning of the Case Study
4.2. Description of the Regional Context and Motivation
4.3. Alternatives and Criteria Used in the Study Case
4.3.1. Alternatives Considered in the Study
4.3.2. Criteria Used in the Study Case
- ▪ A cost criterion is a criterion to be minimized and a benefit criterion is a criterion to be maximized.
4.4. Reference Decision Matrix
5. Numerical Results, Inter-Method Comparison and Discussion
5.1. Pretreatment and Normalization
| Alternative | C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | C9 | C10 |
|---|---|---|---|---|---|---|---|---|---|---|
| A0 (Ideal) | [0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
| A1 Incineration | [0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.950; 1.000; 1.000] X=0.976 |
[0.050; 0.100; 0.150] X=0.088 |
[0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.350; 0.400; 0.450] X=0.388 |
| A2 Centralized autoclaving | [0.825; 0.875; 0.925] X=0.863 |
[0.664; 0.714; 0.764] X=0.702 |
[0.936; 0.986; 1.000] X=0.966 |
[0.907; 0.957; 1.000] X=0.943 |
[0.892; 0.942; 0.992] X=0.930 |
[0.766; 0.816; 0.866] X=0.804 |
[0.850; 0.900; 0.950] X=0.888 |
[0.950; 1.000; 1.000] X=0.976 |
[0.839; 0.889; 0.939] X=0.877 |
[0.830; 0.880; 0.930] X=0.868 |
| A3 Microwave | [0.700; 0.750; 0.800] X=0.738 |
[0.379; 0.429; 0.479] X=0.417 |
[0.909; 0.959; 1.000] X=0.945 |
[0.850; 0.900; 0.950] X=0.888 |
[0.835; 0.885; 0.935] X=0.873 |
[0.562; 0.612; 0.662] X=0.600 |
[0.550; 0.600; 0.650] X=0.588 |
[0.798; 0.848; 0.898] X=0.836 |
[0.950; 1.000; 1.000] X=0.976 |
[0.590; 0.640; 0.690] X=0.628 |
| A4 Chemical | [0.950; 1.000; 1.000] X=0.976 |
[0.093; 0.143; 0.193] X=0.131 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.950; 1.000; 1.000] X=0.976 |
[0.000; 0.000; 0.050] X=0.010 |
[0.000; 0.000; 0.050] X=0.010 |
[0.344; 0.394; 0.444] X=0.382 |
[0.311; 0.361; 0.411] X=0.349 |
[0.000; 0.000; 0.050] X=0.010 |
| A5 Regional Outsourcing | [0.617; 0.667; 0.717] X=0.655 |
[0.950; 1.000; 1.000] X=0.976 |
[0.855; 0.905; 0.955] X=0.893 |
[0.764; 0.814; 0.864] X=0.802 |
[0.796; 0.846; 0.896] X=0.834 |
[0.766; 0.816; 0.866] X=0.804 |
[0.950; 1.000; 1.000] X=0.976 |
[0.859; 0.909; 0.959] X=0.897 |
[0.672; 0.722; 0.772] X=0.710 |
[0.950; 1.000; 1.000] X=0.976 |
| Alternative | C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | C9 | C10 |
|---|---|---|---|---|---|---|---|---|---|---|
| A0 Ideal |
0.2315 | 0.3040 | 0.2049 | 0.2125 | 0.2123 | 0.2342 | 0.2769 | 0.2395 | 0.2505 | 0.2539 |
| A1 Incineration |
0.0023 | 0.0030 | 0.0020 | 0.0021 | 0.0021 | 0.2342 | 0.0249 | 0.0024 | 0.0025 | 0.1008 |
| A2 Autoclaving |
0.2046 | 0.2185 | 0.2027 | 0.2053 | 0.2022 | 0.1928 | 0.2518 | 0.2395 | 0.2250 | 0.2257 |
| A3 Microwave |
0.1749 | 0.1298 | 0.1983 | 0.1932 | 0.1898 | 0.1438 | 0.1667 | 0.2050 | 0.2505 | 0.1632 |
| A4 Chemical |
0.2315 | 0.0407 | 0.2049 | 0.2125 | 0.2123 | 0.0023 | 0.0027 | 0.0936 | 0.0895 | 0.0025 |
| A5 Outsourcing |
0.1553 | 0.3040 | 0.1873 | 0.1745 | 0.1813 | 0.1928 | 0.2769 | 0.2200 | 0.1821 | 0.2539 |
5.2. Preliminary Weight (BWM) and Inferred Weight (ARAS-IW)
5.3. ARAS-H-IW Results: Aggregate Scores and Degrees of Utility
5.4. Numerical Comparison with TOPSIS, VIKOR, PROMETHEE II, and EDAS
5.5. Sensitivity Analysis: Numerical Results
5.6. Overall robustness: Monte Carlo analysis (rank acceptability)
5.7. Discussion
5.7.1. Why Does A2 (Autoclaving) Dominate Numerically in This Study Case?
5.7.2. Why Does A5 (Outsourcing) Remain Competitive, and Can It Be Ranked First by TOPSIS/EDAS?
5.7.3. Why Does A3 (Microwave) Consistently Rank Third?
5.7.4. Methodological Justification: Why Is ARAS-H-IW More Appropriate for Public Decision-making?
5.7.5. Limitations and Critical Perspectives
5.7.6. Implications for the Fez-Meknes Region
6. Conclusion
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| Approach | Uncertainty representation | Weighting paradigm | Preference-driven weight inference | Unique and reproducible solution | Inter-expert inconsistency and robustness |
|---|---|---|---|---|---|
| Fuzzy/intuitionistic TOPSIS | Triangular or intuitionistic fuzzy numbers | Exogenous (AHP, Entropy) | No | Closed-form, but conditional on the assumed weights | Limited; no relaxation of conflicting judgments |
| Hesitant fuzzy VIKOR | Hesitant fuzzy elements | Exogenous | No | Deterministic | Compromise ranking; sensitivity usually one-dimensional |
| Fuzzy AHP / BWM-based | Fuzzy pairwise ratios | Subjective elicitation (imposed) | No | Consistency-dependent | No formal mechanism for inconsistent experts |
| Hesitant fuzzy TOPSIS with incomplete weights | Hesitant fuzzy elements | Partial-information programming | Partial (weight intervals, not preference-driven) | Solver-dependent | Limited |
| Higher-order fuzzy hybrids (Pythagorean, picture, GLDS, etc.) | Higher-order fuzzy sets | Exogenous or score-based | No | Often metaheuristic, hence non-unique | Varies; rarely auditable |
| Classical fuzzy ARAS-H | Hesitant fuzzy elements | Exogenous | No | Deterministic | One-shot; limited robustness analysis |
| ARAS-H-IW (proposed) | Hesitant fuzzy elements with dispersion penalty | A priori w0 (BWM / CRITIC / Entropy) refined by inference | Yes - convex quadratic program driven by ordinal preferences | Yes - strictly convex QP yields a unique, deterministic, open-source solution | Slack-based tolerance (strategies S1-S4) plus Monte Carlo rank acceptability |
| Strategy | When to use it | Key advantages | Boundaries |
|---|---|---|---|
| S1: Pooled pairs | Experts generally agree, and disagreements are moderate | Robust, simple, unique QP, excellent traceability | The experts are implicitly merged |
| S2: Expert Inference | Highly heterogeneous experts or distinct profiles | Explicit measurement of disagreement, detailed analysis by criterion | More computationally expensive |
| S3: Consensus ranking | Need for maximum readability | A single target ranking, easy to explain | Loss of individual information |
| S4: Robust approach (min–max) | Sensitive or high-stakes decision | Avoid sacrificing an expert | More complex model |
| Normalized value x | H = { x − δ, x , x + δ} | S(H) | D(H) | X=S−λD |
|---|---|---|---|---|
| 0.70 | {0.65, 0.70, 0.75} | 0.70 | 0.041 | 0.688 |
| 0.30 | {0.25, 0.30, 0.35} | 0.30 | 0.041 | 0.288 |
| Language assessment | Hesitant terms | H (numerical values) | S(H) | D(H) | X=S–λ×D |
|---|---|---|---|---|---|
| Hesitation between "Medium" and "High" | {Medium, High} | {0.50, 0.75} | 0.625 | 0.125 | 0.600 |
| Hesitation between "Low" and "Medium" | {Low, Medium} | {0.25, 0.50} | 0.375 | 0.125 | 0.350 |
| "Very High" (without hesitation) | {Very High} | {1.0} | 1.0 | 0.0 | 1.0 |
| Region | Quantity (tonnes) | Percentage |
|---|---|---|
| Casablanca-Settat | 2,139 | 27.97% |
| Rabat-Salé-Kénitra | 1,206 | 15.77% |
| Marrakech-Safi | 910 | 11.90% |
| Fez-Meknes | 821 | 10.74% |
| Tangier-Tetouan-Al Hoceima | 672 | 8.79% |
| The Oriental | 578 | 7.56% |
| Souss-Massa | 536 | 7.01% |
| Beni Mellal-Khenifra | 404 | 5.28% |
| Draâ-Tafilalet | 233 | 3.05% |
| Guelmim-Oued Noun | 68 | 0.89% |
| Laâyoune-Sakia El Hamra | 68 | 0.89% |
| Dakhla-Oued Eddahab | 12 | 0.16% |
| Province | Hospitals | Health centers | Total |
|---|---|---|---|
| Fez | 8 | 10 | 18 |
| Meknes | 5 | 10 | 15 |
| Taza | 1 | 5 | 6 |
| Sefrou | 1 | 2 | 3 |
| Boulemane | 0 | 5 | 5 |
| Taounate | 1 | 5 | 6 |
| Others | 2 | 10 | 12 |
| Alternative | Main inputs | Process / Key Units | Outputs (residues, effluents, emissions) |
|---|---|---|---|
| A1: On-site incineration (double chamber with flue gas treatment) | Infectious HW, auxiliary fuels (gas/fuel oil), combustion air, flue gas treatment reagents (lime/bicarbonate, activated carbon), water (if applicable), electricity | Double-chamber furnace with afterburner, temperature/time control, flue gas treatment (dust removal, neutralization, adsorption), optional wet cleaning | Fumes (CO₂, NOx, HCl/SO₂, particulate matter, dioxins/furans depending on the control level), ash (bottom ash and fly ash/REFIOM), liquid effluents (if scrubber), noise |
| A2: Centralized autoclaving with grinding (regional center) | Sorted infectious waste, steam and energy (electricity/gas), water, consumables (bags, indicators), personal protective equipment (PPE), maintenance | Autoclave (temperature, pressure, time) with performance control, grinding and sterilization, residue storage, traceability | Sterilized and treated residues are directed to the ordinary waste stream or non-hazardous waste landfill, aqueous condensates, very low direct emissions (excluding energy), noise |
| A3: Microwave treatment with grinding (regional center) | Infectious waste sorted, electricity, water (possible humidification), consumables, maintenance (magnetron), PPE | Microwave disinfection (volumetric heating) coupled with grinding, process control, and traceability. | Disinfect and neutralize waste, limited direct emissions (excluding energy), noise, dissipated heat |
| A4: Chemical disinfection (targeted streams) with neutralization | Specific fluxes (compatible liquids or objects), chemical reagents (chlorine, peroxide, quaternary ammonium compounds according to protocol), water, neutralizing agents, PPE, storage equipment | Chemical disinfection (dosage and contact time), neutralization, effluent management, and control | Effluents requiring specific treatment (reagent residues), neutralization sludge, reagent packaging, and indirect emissions related to product transport |
| A5: Regional outsourcing (collection–transport–processing) | HW packaged according to regulations, fuel for transport, service contracts, documentary traceability (delivery slips), PPE | Collection and packaging, transport to a regional facility, treatment (autoclave, incineration, or mixed solution), service provider control | Outputs dependent on the technology used by the service provider; logistical impacts, including CO₂ emissions related to transport, and document compliance |
| Criteria | Title (unit) | Orientation | Description |
|---|---|---|---|
| C1 | Total cost (CAPEX + OPEX) [€/t] | Cost ( ↓ ) | Total cost per tonne processed, including amortized investment and operating expenses (energy, maintenance, labor, consumables, control). |
| C2 | Operational capacity [kg/h] | Benefit ( ↑ ) | Ability to absorb regional load and flow variations, ensuring continuity of service. |
| C3 | CO₂ emissions [kg/t] | Cost ( ↓ ) | Direct and indirect carbon footprint associated with the treatment process and energy consumption. |
| C4 | Toxic emissions (index 0–100) | Cost ( ↓ ) | Synthetic indicator of critical pollutants (dioxins/furans, NOx, particles, acid gases) and the level of emission control requirements. |
| C 5 | Energy consumption [kWh/t] | Cost ( ↓ ) | Energy required by the process, reflecting energy efficiency and associated impacts. |
| C6 | Health performance [%] | Benefit ( ↑ ) | Efficacy of inactivating or sterilizing pathogens, reflecting the reduction of infectious risk. |
| C7 | Compliance and traceability (index 0–100) | Benefit ( ↑ ) | Ability to meet regulatory requirements for monitoring, recording, and chain of responsibility. |
| C8 | HSE risk for operators (index 0–100) | Cost ( ↓ ) | Level of exposure of operators to occupational risks (handling, fumes, reagents, sharps, incidents). |
| C9 | Social acceptability (index 0–100) | Benefit ( ↑ ) | Degree of acceptance by local stakeholders, taking into account nuisances, risk perception and institutional trust. |
| C10 | Flexibility in the face of variable flows (index 0–100) | Benefit ( ↑ ) | Ability to adapt to variations in the volume and composition of HW, reflecting operational resilience. |
| Alternative | C1 Cost (€/t) | C2 Capacity (kg/h) | C3 CO2 (kg/t) | C4 Toxic (0–100) | C5 Energy (kWh/t) | C6 Sanitary (%) | C7 Compliance | C8 HSE Risk | C9 Acceptability | C10 Flexibility |
|---|---|---|---|---|---|---|---|---|---|---|
| A1 | 520 | 450 | 850 | 85 | 680 | 99.99 | 72 | 58 | 42 | 70 |
| A2 | 310 | 700 | 120 | 18 | 190 | 99.90 | 88 | 25 | 74 | 82 |
| A3 | 340 | 600 | 140 | 22 | 220 | 99.80 | 82 | 30 | 78 | 76 |
| A4 | 280 | 500 | 110 | 15 | 160 | 99.50 | 70 | 45 | 55 | 60 |
| A5 | 360 | 800 | 180 | 28 | 240 | 99.90 | 90 | 28 | 68 | 85 |
| Alternative | C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | C9 | C10 |
|---|---|---|---|---|---|---|---|---|---|---|
| A0 Ideal |
1.000 | 1.000 | 1.000 | 1.000 | 1.000 | 1.000 | 1.000 | 1.000 | 1.000 | 1.000 |
| A1 Incineration |
0.000 | 0.000 | 0.000 | 0.000 | 0.000 | 1.000 | 0.100 | 0.000 | 0.000 | 0.400 |
| A2 Centralized autoclaving |
0.875 | 0.714 | 0.986 | 0.957 | 0.942 | 0.816 | 0.900 | 1.000 | 0.889 | 0.880 |
| A3 Microwave |
0.750 | 0.429 | 0.959 | 0.900 | 0.885 | 0.612 | 0.600 | 0.848 | 1.000 | 0.640 |
| A4 Chemical |
1.000 | 0.143 | 1.000 | 1.000 | 1.000 | 0.000 | 0.000 | 0.394 | 0.361 | 0.000 |
| A5 Regional Outsourcing | 0.667 | 1.000 | 0.905 | 0.814 | 0.846 | 0.816 | 1.000 | 0.909 | 0.722 | 1.000 |
| Criteria | C1 | C2 | C3 | C4 | C5 | C6 | C7 | C8 | C9 | C10 |
|---|---|---|---|---|---|---|---|---|---|---|
| w0 (BWM) | 0.1029 | 0.1029 | 0.1029 | 0.1029 | 0.1029 | 0.13240 | 0.1029 | 0.1029 | 0.1029 | 0.0441 |
| w* (inferred) | 0.1058 | 0.0759 | 0.1185 | 0.1146 | 0.1144 | 0.1255 | 0.0779 | 0.1034 | 0.1336 | 0.0305 |
| Alternative | Si(w0) | Ki(w0) | Rank(w0) | Si(w*) | Ki(w*) | Rank(w*) |
|---|---|---|---|---|---|---|
| A1 Incineration | 0.040 | 0.16 | 5 | 0.036 | 0.15 | 5 |
| A2 Autoclaving | 0.216 | 0.89 | 1 | 0.214 | 0.90 | 1 |
| A3 Microwave | 0.181 | 0.75 | 3 | 0.186 | 0.79 | 3 |
| A4 Chemical | 0.112 | 0.47 | 4 | 0.123 | 0.52 | 4 |
| A5 Outsourcing | 0.210 | 0.87 | 2 | 0.203 | 0.86 | 2 |
| A0 Ideal | 0.241 | 1.00 | – | 0.237 | 1.00 | – |
| Alternative | ARAS Ki | TOPSIS Ci | VIKOR Qi | PROMETHEE phi | EDAS AS |
|---|---|---|---|---|---|
| A1 Incineration | 0.152262 | 0.012335 | 1.0000 | -0.694831 | 0.000423 |
| A2 Autoclaving | 0.903276 | 0.941813 | 0.0000 | 0.520323 | 1.0000 |
| A3 Microwave | 0.785159 | 0.882334 | 0.428443 | 0.070843 | 0.867204 |
| A4 Chemical | 0.516939 | 0.806165 | 0.269204 | 0.062944 | 0.868684 |
| A5 Outsourcing | 0.855285 | 0.843391 | 0.461984 | 0.040721 | 0.806871 |
| Method | Rank obtained | Spearman ρ | Kendall τ |
|---|---|---|---|
| TOPSIS | A2 ≻ A3 ≻ A5 ≻ A4≻ A1 | 0.900 | 0.800 |
| VIKOR | A2 ≻ A4 ≻ A3 ≻ A5 ≻ A1 | 0.600 | 0.400 |
| PROMETHEE II | A2 ≻ A3 ≻ A4 ≻ A5≻ A1 | 0.700 | 0.600 |
| EDAS | A2 ≻ A4 ≻ A3 ≻ A5 ≻ A1 | 0.600 | 0.400 |
| Alternative | Probability of being 1st |
|---|---|
| A2 Autoclaving | 0.83 |
| A5 Outsourcing | 0.13 |
| A3 Microwave | 0.04 |
| A4 Chemical | 0.00 |
| A1 Incineration | 0.00 |
| P(rank=1) | P(rank=2) | P(rank=3) | P(rank=4) | P(rank=5) | |
|---|---|---|---|---|---|
| A1 | 0 | 0 | 0 | 0 | 1 |
| A2 | 0.9978 | 0.0022 | 0 | 0 | 0 |
| A3 | 0 | 0.001 | 0.999 | 0 | 0 |
| A4 | 0 | 0 | 0 | 1 | 0 |
| A5 | 0.0022 | 0.9968 | 0.001 | 0 | 0 |
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