2023
DOI: 10.1609/hcomp.v11i1.27547
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Collect, Measure, Repeat: Reliability Factors for Responsible AI Data Collection

Oana Inel,
Tim Draws,
Lora Aroyo

Abstract: The rapid entry of machine learning approaches in our daily activities and high-stakes domains demands transparency and scrutiny of their fairness and reliability. To help gauge machine learning models' robustness, research typically focuses on the massive datasets used for their deployment, e.g., creating and maintaining documentation for understanding their origin, process of development, and ethical considerations. However, data collection for AI is still typically a one-off practice, and oftentimes dataset… Show more

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Cited by 2 publications
(1 citation statement)
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“…Moreover, significant progress has been made in the design and implementation of trust enablers for HAIC, which also present distinct challenges. Researchers have explored multiple perspectives to design and improve AI transparency (Vössing et al, 2022), empathy (Srinivasan and González, 2022), reliability (Inel, 2023), interpretability (Ross et al, 2021), and ethicality (Schelble et al, 2022), improving human trust and satisfaction towards AI (Schelble et al, 2022). However, obstacles have also been identified.…”
Section: Trust Enablersmentioning
confidence: 99%
“…Moreover, significant progress has been made in the design and implementation of trust enablers for HAIC, which also present distinct challenges. Researchers have explored multiple perspectives to design and improve AI transparency (Vössing et al, 2022), empathy (Srinivasan and González, 2022), reliability (Inel, 2023), interpretability (Ross et al, 2021), and ethicality (Schelble et al, 2022), improving human trust and satisfaction towards AI (Schelble et al, 2022). However, obstacles have also been identified.…”
Section: Trust Enablersmentioning
confidence: 99%