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What does LIME really see in images?
v1v2 (latest)

What does LIME really see in images?

International Conference on Machine Learning (ICML), 2021
11 February 2021
Damien Garreau
Dina Mardaoui
    FAtt
ArXiv (abs)PDFHTMLGithub

Papers citing "What does LIME really see in images?"

18 / 18 papers shown
On The Variability of Concept Activation Vectors
On The Variability of Concept Activation Vectors
Julia Wenkmann
Damien Garreau
AAML
158
2
0
28 Sep 2025
Attribution Explanations for Deep Neural Networks: A Theoretical Perspective
Attribution Explanations for Deep Neural Networks: A Theoretical Perspective
Huiqi Deng
Hongbin Pei
Quanshi Zhang
Mengnan Du
FAtt
236
1
0
11 Aug 2025
Study on the Helpfulness of Explainable Artificial Intelligence
Study on the Helpfulness of Explainable Artificial Intelligence
Tobias Labarta
Elizaveta Kulicheva
Ronja Froelian
Christian Geißler
Xenia Melman
Julian von Klitzing
ELM
302
8
0
14 Oct 2024
Provably Better Explanations with Optimized Aggregation of Feature
  Attributions
Provably Better Explanations with Optimized Aggregation of Feature AttributionsInternational Conference on Machine Learning (ICML), 2024
Thomas Decker
Ananta R. Bhattarai
Jindong Gu
Volker Tresp
Florian Buettner
242
7
0
07 Jun 2024
CAM-Based Methods Can See through Walls
CAM-Based Methods Can See through Walls
Magamed Taimeskhanov
R. Sicre
Damien Garreau
285
4
0
02 Apr 2024
Using Stratified Sampling to Improve LIME Image Explanations
Using Stratified Sampling to Improve LIME Image Explanations
Muhammad Rashid
E. Amparore
Enrico Ferrari
Damiano Verda
FAtt
247
8
0
26 Mar 2024
SurvBeNIM: The Beran-Based Neural Importance Model for Explaining the
  Survival Models
SurvBeNIM: The Beran-Based Neural Importance Model for Explaining the Survival Models
Lev V. Utkin
Danila Eremenko
A. Konstantinov
398
0
0
11 Dec 2023
GLIME: General, Stable and Local LIME Explanation
GLIME: General, Stable and Local LIME ExplanationNeural Information Processing Systems (NeurIPS), 2023
Zeren Tan
Yang Tian
Jian Li
FAttLRM
263
44
0
27 Nov 2023
Fairness Explainability using Optimal Transport with Applications in
  Image Classification
Fairness Explainability using Optimal Transport with Applications in Image Classification
Philipp Ratz
Franccois Hu
Arthur Charpentier
254
1
0
22 Aug 2023
On the Robustness of Text Vectorizers
On the Robustness of Text VectorizersInternational Conference on Machine Learning (ICML), 2023
R. Catellier
Samuel Vaiter
Damien Garreau
OOD
173
3
0
09 Mar 2023
Stop overkilling simple tasks with black-box models and use transparent models instead
Matteo Rizzo
Matteo Marcuzzo
A. Zangari
A. Gasparetto
A. Albarelli
VLM
306
1
0
06 Feb 2023
Identifying Spurious Correlations and Correcting them with an
  Explanation-based Learning
Identifying Spurious Correlations and Correcting them with an Explanation-based Learning
Misgina Tsighe Hagos
Kathleen M. Curran
Brian Mac Namee
313
11
0
15 Nov 2022
A Survey of Computer Vision Technologies In Urban and
  Controlled-environment Agriculture
A Survey of Computer Vision Technologies In Urban and Controlled-environment AgricultureACM Computing Surveys (ACM CSUR), 2022
Jiayun Luo
Boyang Albert Li
Cyril Leung
445
26
0
20 Oct 2022
The Manifold Hypothesis for Gradient-Based Explanations
The Manifold Hypothesis for Gradient-Based Explanations
Sebastian Bordt
Uddeshya Upadhyay
Zeynep Akata
U. V. Luxburg
FAttAAML
333
19
0
15 Jun 2022
How to scale hyperparameters for quickshift image segmentation
How to scale hyperparameters for quickshift image segmentationInternational Conference on Artificial Intelligence and Statistics (AISTATS), 2022
Damien Garreau
179
1
0
23 Jan 2022
An Imprecise SHAP as a Tool for Explaining the Class Probability
  Distributions under Limited Training Data
An Imprecise SHAP as a Tool for Explaining the Class Probability Distributions under Limited Training Data
Lev V. Utkin
A. Konstantinov
Kirill Vishniakov
FAtt
434
9
0
16 Jun 2021
Ensembles of Random SHAPs
Ensembles of Random SHAPs
Lev V. Utkin
A. Konstantinov
FAtt
245
22
0
04 Mar 2021
Looking Deeper into Tabular LIME
Looking Deeper into Tabular LIME
Damien Garreau
U. V. Luxburg
FAttLMTD
475
34
0
25 Aug 2020
1
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