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1706.04313
Cited By
Teaching Compositionality to CNNs
14 June 2017
Austin Stone
Hua-Yan Wang
Michael Stark
Yi Liu
D. Phoenix
Dileep George
CoGe
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Papers citing
"Teaching Compositionality to CNNs"
14 / 14 papers shown
Title
AI-based association analysis for medical imaging using latent-space geometric confounder correction
Xianjing Liu
Bo-wen Li
Meike W. Vernooij
E. Wolvius
Gennady V. Roshchupkin
Esther E. Bron
MedIm
29
0
0
03 Oct 2023
The Construction of Reality in an AI: A Review
J. W. Johnston
3DV
13
1
0
03 Feb 2023
Greybox XAI: a Neural-Symbolic learning framework to produce interpretable predictions for image classification
Adrien Bennetot
Gianni Franchi
Javier Del Ser
Raja Chatila
Natalia Díaz Rodríguez
AAML
32
28
0
26 Sep 2022
EXplainable Neural-Symbolic Learning (X-NeSyL) methodology to fuse deep learning representations with expert knowledge graphs: the MonuMAI cultural heritage use case
Natalia Díaz Rodríguez
Alberto Lamas
Jules Sanchez
Gianni Franchi
Ivan Donadello
Siham Tabik
David Filliat
P. Cruz
Rosana Montes
Francisco Herrera
49
77
0
24 Apr 2021
Learning Compositional Representation for 4D Captures with Neural ODE
Boyan Jiang
Yinda Zhang
Xingkui Wei
Xiangyang Xue
Yanwei Fu
27
28
0
15 Mar 2021
Rule Extraction from Binary Neural Networks with Convolutional Rules for Model Validation
Sophie Burkhardt
Jannis Brugger
Nicolas Wagner
Zahra Ahmadi
Kristian Kersting
Stefan Kramer
NAI
FAtt
25
8
0
15 Dec 2020
Interpretable and Accurate Fine-grained Recognition via Region Grouping
Zixuan Huang
Yin Li
12
138
0
21 May 2020
On Interpretability of Artificial Neural Networks: A Survey
Fenglei Fan
Jinjun Xiong
Mengzhou Li
Ge Wang
AAML
AI4CE
38
300
0
08 Jan 2020
Locality and compositionality in zero-shot learning
Tristan Sylvain
Linda Petrini
R. Devon Hjelm
24
56
0
20 Dec 2019
Semantically Interpretable Activation Maps: what-where-how explanations within CNNs
Diego Marcos
Sylvain Lobry
D. Tuia
FAtt
MILM
19
26
0
18 Sep 2019
X-ToM: Explaining with Theory-of-Mind for Gaining Justified Human Trust
Arjun Reddy Akula
Changsong Liu
Sari Saba-Sadiya
Hongjing Lu
S. Todorovic
J. Chai
Song-Chun Zhu
24
18
0
15 Sep 2019
Robustness of Object Recognition under Extreme Occlusion in Humans and Computational Models
Hongru Zhu
Peng Tang
Jeongho Park
Soojin Park
Alan Yuille
20
49
0
11 May 2019
Explaining Neural Networks Semantically and Quantitatively
Runjin Chen
Hao Chen
Ge Huang
Jie Ren
Quanshi Zhang
FAtt
23
54
0
18 Dec 2018
Interpretable Neuron Structuring with Graph Spectral Regularization
Alexander Tong
David van Dijk
Jay S. Stanley
Matthew Amodio
Kristina M. Yim
R. Muhle
J. Noonan
Guy Wolf
Smita Krishnaswamy
27
6
0
30 Sep 2018
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