Object

Title: Exploring Employees’ Accountability in Knowledge Management Systems Enhanced by Generative Artificial Intelligence

Creator:

Strelau Robert

Abstract:

The study aims to understand managerial attitudes toward accountability when using GenAI-driven data for decision-making and to identify procedures or regulations that could minimize erroneous data usage. ; Employing a qualitative approach, the study collected insights from senior managers through interviews. Participants shared perspectives on employee responsibility for GenAI-informed decisions and suggested methods to ensure data accuracy. The analysis of these insights facilitated the development of a potential framework for GenAI adoption in KM. ; Findings reveal that most managers view employees as ultimately accountable for decisions, although they acknowledge GenAI as a supportive rather than a substitutive tool. The need for clear guidelines, thorough testing phases, and the implementation of verification procedures emerged as key strategies for minimizing the risks of inaccurate or false data. Managers also highlighted the importance of well-defined roles, with explicit boundaries for GenAI usage. ; The study contributes to theoretical discourse by pinpointing potential accountability structures in GenAI-driven decision-making and by proposing a framework that addresses data verification challenges. Practically, it offers organizations a structured approach to integrating GenAI into KM, emphasizing the need for precise regulations, testing protocols, and ongoing oversight. These insights encourage further exploration of the ethical and social dimensions of GenAI in business settings.

Date issued:

2024-12-31

Electronic Issue Date:

2024-12-31

Identifier:

oai:ribes-88.man.poznan.pl:850 ; doi:10.37055/nsz/203481 ; oai:editorialsystem.com:article-203481

Electronic ISSN:

2719-860X

Print ISSN:

1896-9380

Publisher ID:

203481

License:

click here to follow the link

Starting page:

79

Ending page:

94

Volume:

19

Issue:

4

Journal:

NSZ

Keywords:

accountability ; decision-making ; generative AI ; knowledge management systems ; large language models

Object collections:

Last modified:

May 12, 2025

In our library since:

May 12, 2025

Number of object content hits:

0

All available object's versions:

https://ribes-88.man.poznan.pl/publication/997

Show description in RDF format:

RDF

Show description in OAI-PMH format:

OAI-PMH

×

Citation

Citation style:

This page uses 'cookies'. More information