Multi-Criteria Decision Analysis (MCDA) results for Quantitative Data (KPIs/policy measures)

Decision support using PROMETHEE-GAIA multi-criteria analysis, based on quantitative data such as KPIs and policy measures for sustainable shared mobility reported by living labs across Europe

Analysis Approach & Data Source

This analysis is based on KPI indicators, KPI groups, living-lab submissions, and policy measures reported by cities across Europe.

68

KPI indicators included in this analysis

6

KPI groups used as MCDA criteria

13

Living labs contributing quantitative data

20

Policy measures evaluated as alternatives

KPI groups used as criteria in this run:

  • Improve Safety
  • Improve Public Transport
  • Improve Accessibility
  • Reduction of Emission
  • Improve Mobility Service
  • Improve Multimodality

This quantitative MCDA result uses 68 KPI indicators grouped into 6 criteria, data from 13 living labs, and 20 policy measures evaluated as alternatives. Policy measures are scored against KPI groups through a ridge regression model that estimates the positive or negative contribution of policy measures to KPI changes observed across living labs. These estimated contributions form the input matrix for the PROMETHEE-GAIA analysis, which produces the final ranking of policy measures. Top-ranked policy measure: Ticketing integration in MaaS services. GAIA plane quality: 71.4%. Analysis completed on 2 Apr 2026, 19:49.

Regulatory Authorities perspective

Results were updated on 2 Apr 2026, 19:49

3

Results

Review the analysis outcomes and recommendations

Top insights

Top performer

Highest PROMETHEE net flow

Ticketing integration in MaaS services

φ = +0.158

Sensitivity level

Stability of top ranking

High sensitivity

Top alternatives are very close; small weight changes may swap ranks. Gap to #2: +0.017.

Conflict analysis

Most conflicting criteria pair

Improve Public Transport vs Improve Multimodality

Strong conflict detected in the GAIA plane.

Score spread

The difference between the highest and lowest net flow

+0.321

(max-min) = (+0.158) - (-0.163). How separated the alternatives are.

GAIA quality

2D projection representativeness

71.4%

Moderate confidence in GAIA interpretation.

Differentiating criteria

Most discriminating in the GAIA plane

Improve Safety, Improve Mobility Service, Improve Public Transport

Top 3 by vector length: 0.74, 0.65, 0.56.

The rankings and recommendations shown are derived from rigorous methodology and expert data, but they do not guarantee actual performance in your city or region. Factors such as local regulations, infrastructure, culture, and stakeholder engagement can all impact real-world results. Please use this information in conjunction with local expertise and detailed feasibility assessment.