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Article
Publication date: 17 May 2023

Simone Caruso, Manfredi Bruccoleri, Astrid Pietrosi and Antonio Scaccianoce

The nature and amount of data that public organizations have to monitor to counteract corruption lead to a phenomenon called “KPI overload”, consisting of the business analyst…

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Abstract

Purpose

The nature and amount of data that public organizations have to monitor to counteract corruption lead to a phenomenon called “KPI overload”, consisting of the business analyst feeling overwhelmed by the amount of information and resulting in the absence of appropriate control. The purpose of this study is to develop a solution based on Artificial Intelligence technology to avoid data overloading and, at the same time, under-controlling in business process monitoring.

Design/methodology/approach

The authors adopted a design science research approach. The authors started by observing a specific problem in a real context (a healthcare organization); then conceptualized, designed and implemented a solution to the problem with the goal to develop knowledge that can be used to design solutions for similar problems. The proposed solution for business process monitoring integrates databases and self-service business intelligence for outlier detection and artificial intelligence for classification analysis.

Findings

The authors found the solution powerful to solve problems related to KPI overload in process monitoring. In the specific case study, the authors found that the combination of Business Intelligence and Artificial Intelligence can provide a significant contribution to the detection of fraud, corruption and/or policy misalignment in public organizations.

Originality/value

The authors provide a big-data-based solution to the problem of data overload in business process monitoring that does not sacrifice any monitored Key Performance Indicators and that also reduces the workload of the business analyst. The authors also developed and implemented this automated solution in a context where data sensitivity and privacy are critical issues.

Article
Publication date: 13 December 2024

Antônio Ronaldo Madeira de Carvalho and Gérson Tontini

This paper explores how the maturity of social relationship management in philanthropic hospitals affects community engagement as well as economic and financial support.

Abstract

Purpose

This paper explores how the maturity of social relationship management in philanthropic hospitals affects community engagement as well as economic and financial support.

Design/methodology/approach

The research is based on a sample of 121 philanthropic hospital organizations located in Brazil, answered by hospital managers. Using structural equation modeling, this study examines how the hospital’s maturity in managing community relations influences both the community’s engagement with the hospital and its economic and financial support. The model is related to the maturity of community relationship management (technology, process, people, strategy and organizational culture), community engagement (interactivity, social presence and loyalty) and community economic and financial support.

Findings

The results reveal that community involvement positively impacts economic and financial support, but there is no positive and direct correlation between the maturity of community relationship management and economic and financial support. As hospitals mature in management practices, community involvement in economic and financial support tends to decrease. Nevertheless, effective community engagement remains crucial for economic and financial support. The study emphasizes the need for structured relationship management within philanthropic hospitals and the implementation of effective strategies for community involvement.

Originality/value

This study introduces a new model for evaluating the maturity of hospital-community relationship management.

Details

Journal of Health Organization and Management, vol. ahead-of-print no. ahead-of-print
Type: Research Article
ISSN: 1477-7266

Keywords

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