Matches in SemOpenAlex for { <https://semopenalex.org/work/W4386191907> ?p ?o ?g. }
- W4386191907 abstract "Abstract Although the circular economy is commonly used among industries in developing countries to achieve carbon neutrality targets, its impact on social sustainability must be clarified. Stakeholders (for instance, community stakeholders) have been observed to be unaware of the focal firm's circular supply chain activities. Because this gap has not been generally reflected in the literature, it is critical to perform an empirical study to bridge the gap between theory and practice. The goal of this research was to determine whether new technologies such as big data and predictive analytics might influence an organization's propensity to share information related to circular economy practices with stakeholders as well as to increase connectivity with those stakeholders in the Industry 4.0 era. We also investigated whether these actions could increase stakeholder trust and engagement and social sustainability as a result. We tested our theoretical model using samples from food supply chain firms in South Africa. Confirmatory factor analysis was conducted using WarpPLS 7.0 software. The findings show that firms that deploy big data and predictive analytics are more likely to share information related to the circular economy with stakeholders and that these firms are also well‐connected with those stakeholders, resulting in increased trust and engagement. This, in turn, contributes to the social sustainability of supply chains. Our research has made a significant contribution by encouraging a theoretical debate regarding the willingness to share information regarding the circular economy and the social sustainability of the supply chain." @default.
- W4386191907 created "2023-08-27" @default.
- W4386191907 creator A5006589612 @default.
- W4386191907 creator A5012549673 @default.
- W4386191907 creator A5019290738 @default.
- W4386191907 creator A5045841946 @default.
- W4386191907 creator A5080862570 @default.
- W4386191907 date "2023-08-26" @default.
- W4386191907 modified "2023-10-17" @default.
- W4386191907 title "Data‐driven insights for circular and sustainable food supply chains: An empirical exploration of big data and predictive analytics in enhancing social sustainability performance" @default.
- W4386191907 cites W2005525451 @default.
- W4386191907 cites W2040268567 @default.
- W4386191907 cites W2044744663 @default.
- W4386191907 cites W2052194544 @default.
- W4386191907 cites W2060408545 @default.
- W4386191907 cites W2066298685 @default.
- W4386191907 cites W2078705760 @default.
- W4386191907 cites W2087442202 @default.
- W4386191907 cites W2088530342 @default.
- W4386191907 cites W2089013788 @default.
- W4386191907 cites W2113814318 @default.
- W4386191907 cites W2131598490 @default.
- W4386191907 cites W2134884007 @default.
- W4386191907 cites W2146410840 @default.
- W4386191907 cites W2152727262 @default.
- W4386191907 cites W2317513717 @default.
- W4386191907 cites W2472025970 @default.
- W4386191907 cites W2486740480 @default.
- W4386191907 cites W2505786633 @default.
- W4386191907 cites W2508563792 @default.
- W4386191907 cites W2517745273 @default.
- W4386191907 cites W2554300231 @default.
- W4386191907 cites W2606700149 @default.
- W4386191907 cites W2606825238 @default.
- W4386191907 cites W2621152421 @default.
- W4386191907 cites W2735550156 @default.
- W4386191907 cites W2751671595 @default.
- W4386191907 cites W2788922693 @default.
- W4386191907 cites W2808783403 @default.
- W4386191907 cites W2809915777 @default.
- W4386191907 cites W2884694603 @default.
- W4386191907 cites W2886533802 @default.
- W4386191907 cites W2888633964 @default.
- W4386191907 cites W2898206902 @default.
- W4386191907 cites W2900680494 @default.
- W4386191907 cites W2902365712 @default.
- W4386191907 cites W2904946774 @default.
- W4386191907 cites W2905938194 @default.
- W4386191907 cites W2942804826 @default.
- W4386191907 cites W2947337027 @default.
- W4386191907 cites W2954088742 @default.
- W4386191907 cites W2954545090 @default.
- W4386191907 cites W2956002600 @default.
- W4386191907 cites W2962845615 @default.
- W4386191907 cites W2963302431 @default.
- W4386191907 cites W2963317542 @default.
- W4386191907 cites W2965611341 @default.
- W4386191907 cites W2972417501 @default.
- W4386191907 cites W2977992592 @default.
- W4386191907 cites W2982208822 @default.
- W4386191907 cites W2984375107 @default.
- W4386191907 cites W2987637913 @default.
- W4386191907 cites W2990563782 @default.
- W4386191907 cites W2991493714 @default.
- W4386191907 cites W2997759395 @default.
- W4386191907 cites W2998574317 @default.
- W4386191907 cites W3004193809 @default.
- W4386191907 cites W3004613355 @default.
- W4386191907 cites W3011219354 @default.
- W4386191907 cites W3013857985 @default.
- W4386191907 cites W3015934118 @default.
- W4386191907 cites W3021229497 @default.
- W4386191907 cites W3024630239 @default.
- W4386191907 cites W3037210899 @default.
- W4386191907 cites W3039423140 @default.
- W4386191907 cites W3041400196 @default.
- W4386191907 cites W3043170211 @default.
- W4386191907 cites W3043722067 @default.
- W4386191907 cites W3045616852 @default.
- W4386191907 cites W3047964161 @default.
- W4386191907 cites W3048721401 @default.
- W4386191907 cites W3081220166 @default.
- W4386191907 cites W3085054771 @default.
- W4386191907 cites W3085106534 @default.
- W4386191907 cites W3087082359 @default.
- W4386191907 cites W3088457529 @default.
- W4386191907 cites W3088647107 @default.
- W4386191907 cites W3092836608 @default.
- W4386191907 cites W3097839885 @default.
- W4386191907 cites W3111891150 @default.
- W4386191907 cites W3117518110 @default.
- W4386191907 cites W3119523980 @default.
- W4386191907 cites W3121536482 @default.
- W4386191907 cites W3122254441 @default.
- W4386191907 cites W3123586847 @default.
- W4386191907 cites W3125039557 @default.
- W4386191907 cites W3126763395 @default.
- W4386191907 cites W3128093002 @default.
- W4386191907 cites W3133107610 @default.
- W4386191907 cites W3137610530 @default.