Pala, Osman2023-04-272023-04-272023Pala, O. (2023). A new objective weighting method based on robustness of ranking with standard deviation and correlation: The ROCOSD method. Information Sciences, 636 doi:10.1016/j.ins.2023.04.0090020-0255https://doi.org/10.1016/j.ins.2023.04.009https://hdl.handle.net/11492/7114WOS:000982263100001In this study, we proposed a new objective criteria weighting method simultaneously addressing standard deviations, correlation coefficients and robustness of ranking. The Robustness, Correlation, and Standard Deviation (ROCOSD) method assigns weight values according to three objectives. The first objectives are intended to minimize the overall maximum deviation from the ratio that the criteria deserve and are based on calculated standard deviations and correlation coefficients. The final one maximizes the minimum change in any criteria weight which leads to a rank reversal on alternatives. We focused on four cases and examined the proposed method, and later created a comparative analysis based on the application of five well-known methods. The average rank correlation consistency and weighting accuracy indicated that ROCOSD achieved better statistics in various ranges (0.0365% to 37.3393%), (4.6292% to 28.4925%) respectively. Compared to other well-known techniques, the average results for robustness, the primary tenet of ROCOSD, demonstrated that the proposed approach yielded far better results (ranging from 1.6407 to 6.4706 times). With the aim of determining the performance of the ROCOSD method in real-life applications, we examined e-government development and evaluated the effectiveness and success of the ROCOSD method.enCorrelationCriteria WeightingE-Government DevelopmentMultiple Criteria AnalysisRobustnessStandard DeviationA new objective weighting method based on robustness of ranking with standard deviation and correlation: The ROCOSD methodArticle636info:eu-repo/semantics/closedAccess2-s2.0-85152128226WOS:00098226310000110.1016/j.ins.2023.04.009Q1N/A