J 2026

Artificial intelligence system reliability and knowledge identity: A model for knowledge workers in knowledge management environments

TAGHINEJAD, Ramin; Adam PAWLICZEK a Hossein MOVAHED

Základní údaje

Originální název

Artificial intelligence system reliability and knowledge identity: A model for knowledge workers in knowledge management environments

Autoři

TAGHINEJAD, Ramin; Adam PAWLICZEK a Hossein MOVAHED

Vydání

Knowledge Management & E-Lear, 2026, 2073-7904

Další údaje

Jazyk

angličtina

Typ výsledku

Článek v odborném periodiku

Stát vydavatele

Hongkong

Utajení

není předmětem státního či obchodního tajemství

Odkazy

Impakt faktor

Impact factor: 2.800 v roce 2024

Označené pro přenos do RIV

Ne

Organizační jednotka

Moravská vysoká škola Olomouc

Klíčová slova anglicky

Artificial intelligence; Knowledge identity; Knowledge workers; AI system reliability; Knowledge management
Změněno: 1. 4. 2026 08:49, Ing. Michaela Nováková

Anotace

V originále

This study examines how perceived AI system reliability shapes knowledge identity (KI) processes in organisations by influencing how knowledge is presented, transferred, and reproduced. Prior work on AI trustworthiness has largely emphasised technical performance, while underspecifying reliability as a socio-cognitive judgement enacted through human–AI interaction. Drawing on socio-technical systems theory and identity-based knowledge management, a mixed-method design was employed in an aviation maintenance context. First, grounded interviews with domain experts identified five human-centred reliability dimensions (accuracy, user trust, explainability, consistency, and responsiveness). Second, the Analytic Hierarchy Process was used to prioritise these dimensions and inform a composite system reliability score (SRS). Third, hypotheses were tested using PLS-SEM on survey data from 116 knowledge workers. Results show that perceived AI reliability positively affects all three KI processes, with accuracy and user trust exerting the strongest influence. The study contributes by (i) conceptualising AI reliability as a socio-cognitive construct central to KI formation, (ii) operationalising a weighted SRS to support evaluation and improvement of AIenabled knowledge management (KM) systems, and (iii) providing actionable design implications for aligning AI tools with organisational sensemaking and knowledge continuity. Future research should validate the model across industries and integrate objective system metrics with perception-based reliability measures.