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2404.05238
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Allowing humans to interactively guide machines where to look does not always improve human-AI team's classification accuracy
8 April 2024
Giang Nguyen
Mohammad Reza Taesiri
Sunnie S. Y. Kim
Anh Nguyen
HAI
AAML
FAtt
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Papers citing
"Allowing humans to interactively guide machines where to look does not always improve human-AI team's classification accuracy"
6 / 6 papers shown
Title
Interactivity x Explainability: Toward Understanding How Interactivity Can Improve Computer Vision Explanations
Indu Panigrahi
Sunnie S. Y. Kim
Amna Liaqat
Rohan Jinturkar
Olga Russakovsky
Ruth C. Fong
Parastoo Abtahi
FAtt
HAI
52
0
0
14 Apr 2025
Rethinking Interpretability in the Era of Large Language Models
Chandan Singh
J. Inala
Michel Galley
Rich Caruana
Jianfeng Gao
LRM
AI4CE
75
60
0
30 Jan 2024
An Interactive UI to Support Sensemaking over Collections of Parallel Texts
Joyce Zhou
Elena L. Glassman
Daniel S. Weld
31
1
0
11 Mar 2023
Post-hoc Concept Bottleneck Models
Mert Yuksekgonul
Maggie Wang
James Y. Zou
133
183
0
31 May 2022
HIVE: Evaluating the Human Interpretability of Visual Explanations
Sunnie S. Y. Kim
Nicole Meister
V. V. Ramaswamy
Ruth C. Fong
Olga Russakovsky
58
114
0
06 Dec 2021
Human-AI Collaboration in Data Science: Exploring Data Scientists' Perceptions of Automated AI
Dakuo Wang
Justin D. Weisz
Michael J. Muller
Parikshit Ram
Werner Geyer
Casey Dugan
Y. Tausczik
Horst Samulowitz
Alexander G. Gray
166
309
0
05 Sep 2019
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