Transparency Fallacy: Perceived Fairness in Algorithmic Management: M. Mirbabaie et al.
Abstract
Algorithmic management (AM) can pose serious challenges for workers on digital labor platforms (DLPs), such as exploitation and a lack of transparency. Prior information systems research has characterized these challenges as unfair practices, particularly in terms of platform functionalities and procedures (e.g., for salaries). This work examined how disclosing information about AM’s functionalities and procedures affects its perceived fairness. Building on organizational justice theory (OJT), which distinguishes between distributive, procedural, and informational justice, perceived fairness as a measure of justice was used. The authors conducted an online experiment with 234 DLP workers on a self-developed DLP, on which an algorithm allocated suitable tasks. The workers were assigned to three groups with different types of transparency – distributive, informational, and both distributive and informational – and one control group without enhanced transparency. The results suggest that the provision of transparency in AM practices and decision-making processes neither affects the perception of informational nor both distributive and informational fairness. Instead, it influences how AM’s distributive fairness is perceived on DLPs. Although, according to OJT and research on human–computer interactions, individual differences influence perceived fairness regarding transparency measures, factors such as technology affinity and human–computer trust have not been found to be suitable moderators for their interaction. However, the results revealed that these factors were important predictors of perceived fairness, independent of the level of transparency provided.
Study specs
- Authors
- M Mirbabaie,M Langer,J Rieskamp
- Discipline
- Business,Information Systems
- Year
- 2022
- Human Data Platform
- Prolific
- Source
- View Source Google Scholar
Peer Review & Critical Discussion
Potential Selection Bias in 2023 Cohort
The participant pool shows a concerning overrepresentation of users from high-income demographics. Looking at Table 3, we can see that 78% of respondents had annual incomes above $75k, which significantly limits the generalizability of these findings to broader populations.
Non-naive Participants Issue
I've noticed a methodological concern regarding participant naivety. Given that Prolific users often complete multiple studies, there's a real risk that participants had prior exposure to similar experimental paradigms, which could confound the results.
RLHF Applicability to This Study Design
The implications for RLHF training pipelines are understated. If we accept the authors' conclusions about preference stability, this has direct consequences for how we should structure reward model training. The temporal decay effect described in Section 4.2 is particularly relevant.
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