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MLTEing Models: Negotiating, Evaluating, and Documenting Model and
  System Qualities

MLTEing Models: Negotiating, Evaluating, and Documenting Model and System Qualities

3 March 2023
Katherine R. Maffey
Kyle Dotterrer
Jennifer Niemann
Iain J. Cruickshank
Grace A. Lewis
Christian Kastner
ArXivPDFHTML

Papers citing "MLTEing Models: Negotiating, Evaluating, and Documenting Model and System Qualities"

8 / 8 papers shown
Title
Using Quality Attribute Scenarios for ML Model Test Case Generation
Using Quality Attribute Scenarios for ML Model Test Case Generation
Rachel A. Brower-Sinning
Grace A. Lewis
Sebastían Echeverría
Ipek Ozkaya
35
0
0
12 Jun 2024
Law and the Emerging Political Economy of Algorithmic Audits
Law and the Emerging Political Economy of Algorithmic Audits
P. Terzis
Michael Veale
Noëlle Gaumann
MLAU
32
6
0
03 Apr 2024
Aspirations and Practice of Model Documentation: Moving the Needle with
  Nudging and Traceability
Aspirations and Practice of Model Documentation: Moving the Needle with Nudging and Traceability
Avinash Bhat
Austin Coursey
Grace Hu
Sixian Li
Nadia Nahar
Shurui Zhou
Christian Kastner
Jin L. C. Guo
32
23
0
13 Apr 2022
Unsolved Problems in ML Safety
Unsolved Problems in ML Safety
Dan Hendrycks
Nicholas Carlini
John Schulman
Jacob Steinhardt
175
273
0
28 Sep 2021
Towards Guidelines for Assessing Qualities of Machine Learning Systems
Towards Guidelines for Assessing Qualities of Machine Learning Systems
Julien Siebert
Lisa Joeckel
J. Heidrich
K. Nakamichi
Kyoko Ohashi
I. Namba
Rieko Yamamoto
M. Aoyama
28
47
0
25 Aug 2020
Trust in Data Science: Collaboration, Translation, and Accountability in
  Corporate Data Science Projects
Trust in Data Science: Collaboration, Translation, and Accountability in Corporate Data Science Projects
Samir Passi
S. Jackson
163
108
0
09 Feb 2020
Improving fairness in machine learning systems: What do industry
  practitioners need?
Improving fairness in machine learning systems: What do industry practitioners need?
Kenneth Holstein
Jennifer Wortman Vaughan
Hal Daumé
Miroslav Dudík
Hanna M. Wallach
FaML
HAI
192
742
0
13 Dec 2018
Towards A Rigorous Science of Interpretable Machine Learning
Towards A Rigorous Science of Interpretable Machine Learning
Finale Doshi-Velez
Been Kim
XAI
FaML
242
3,681
0
28 Feb 2017
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