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How Network Embeddedness Affects Real-Time Performance Feedback: An Empirical Investigation

Mariia Petryk, Michael Rivera, Siddharth Bhattacharya, Liangfei Qiu, Subodha Kumar

2022Information Systems Research26 citationsDOI

Abstract

Firms and organizations are increasingly using real-time performance feedback mechanisms to evaluate employees, where any employee (rather than just the supervisor) can rate other employees. Hence, a need arises to better understand how network positions of employees in such a system impact their performance. Analyzing nearly 4,000 feedback instances from employees at five major organizations that utilize such a real-time performance feedback application called DevelapMe, we explore the effects of network embeddedness—or the nature of relationships among employees—on performance rating scores according to two dimensions of embeddedness: (i) positional, the position of an individual in the emerging network of performance ratings, and (ii) structural, the extent to which a person is entrenched in a network of relationships. We visualize rating networks within organizations: Employees are nodes, and connections between nodes exist if an evaluation between the pair occurs. We find that specific aspects of network embeddedness affect performance rating scores differently. Our findings have important implications for the design of performance management systems using network analysis.

Topics & Concepts

EmbeddednessSupervisorAffect (linguistics)Position (finance)Job embeddednessComputer sciencePerformance managementKnowledge managementBusinessMarketingPsychologyManagementSocial psychologyEconomicsAnthropologyFinanceSociologyCommunicationComplex Network Analysis TechniquesSocial Capital and NetworksPublic Policy and Administration Research