Published June 21, 2023 | Version v1
Dataset Open

Supplementary Material for "What is the Minimum to Trust AI?—A Requirement Analysis for (Generative) AI-based Texts"

Description

The generative Artificial Intelligence (genAI) innovation enables new potentials for end-users, affecting youth and the inexperienced. Nevertheless, as an innovative technology, genAI risks generating misinformation for end-users that is not recognizable as such. This results in increased trustworthiness of AI outputs. An assessing system for end-users is necessary to expose the unfounded reliance on erroneous responses. This paper identifies requirements for an as- sessing system to prevent end-users from overestimating trust in generated texts. Thus we conducted requirements engineering based on a literature review and two international surveys. With the surveys, we confirmed the requirements which enable human protection, human support, and content veracity in dealing with genAI. High detected trust is rooted in miscalibration; clarity about genAI and its provider is essential to solving this phenomenon, and we detected a demand for human verifications. Consequently, we provide evidence for the significance of future IS research on human-centered genAI trust solutions.

Other

Tomitza, Christoph; Schaschek, Myriam; Straub, Lisa; Winkelmann, Axel: What is the Minimum to Trust AI? - A Requirement Analysis for (Generative) AI-based Texts In: 18th International Conference on Wirtschaftsinformatik (2023), bl under consideration for publication

Files

Demographics.pdf

Files (1.4 MB)

Name Size Download all
Checksum: md5:c53988d5aaa5955b53d0f7b8fa321581

PID: http://hdl.handle.net/11304/0ab45bf7-e7fa-4488-8711-8e1344d827ce
155.9 kB Preview Download
Checksum: md5:2032cfd046b6336cd602ed9dfb56fb05

PID: http://hdl.handle.net/11304/ec4f58f1-d6b1-4779-898d-980f40ec1d55
741.6 kB Preview Download
Checksum: md5:846acdfc82dc91f4191cdb55d452d098

PID: http://hdl.handle.net/11304/42ab8e14-7d8b-4c4d-9b37-b9cd9180aaa6
485.1 kB Preview Download

Additional details

Identifiers

b2rec
5109b4ee67894844a419c20e6522dbbe