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Graying the black box: Understanding DQNs

Graying the black box: Understanding DQNs

8 February 2016
Tom Zahavy
Nir Ben-Zrihem
Shie Mannor
ArXivPDFHTML

Papers citing "Graying the black box: Understanding DQNs"

50 / 66 papers shown
Title
Behaviour Discovery and Attribution for Explainable Reinforcement Learning
Rishav Rishav
Somjit Nath
Vincent Michalski
Samira Ebrahimi Kahou
FAtt
OffRL
73
0
0
19 Mar 2025
Policy-to-Language: Train LLMs to Explain Decisions with Flow-Matching Generated Rewards
Policy-to-Language: Train LLMs to Explain Decisions with Flow-Matching Generated Rewards
Xinyi Yang
Liang Zeng
Heng Dong
Chao Yu
X. Wu
H. Yang
Yu Wang
Milind Tambe
Tonghan Wang
83
2
0
18 Feb 2025
Explaining the Unexplained: Revealing Hidden Correlations for Better Interpretability
Explaining the Unexplained: Revealing Hidden Correlations for Better Interpretability
Wen-Dong Jiang
Chih-Yung Chang
Show-Jane Yen
Diptendu Sinha Roy
FAtt
HAI
87
1
0
02 Dec 2024
Revealing the Learning Process in Reinforcement Learning Agents Through Attention-Oriented Metrics
Revealing the Learning Process in Reinforcement Learning Agents Through Attention-Oriented Metrics
Charlotte Beylier
Simon M. Hofmann
Nico Scherf
26
0
0
20 Jun 2024
Learning Interpretable Models of Aircraft Handling Behaviour by
  Reinforcement Learning from Human Feedback
Learning Interpretable Models of Aircraft Handling Behaviour by Reinforcement Learning from Human Feedback
Tom Bewley
J. Lawry
Arthur G. Richards
32
1
0
26 May 2023
AutoDOViz: Human-Centered Automation for Decision Optimization
AutoDOViz: Human-Centered Automation for Decision Optimization
D. Weidele
S. Afzal
Abel N. Valente
Cole Makuch
Owen Cornec
...
Radu Marinescu
Paulito Palmes
Elizabeth M. Daly
Loraine Franke
D. Haehn
OffRL
50
4
0
19 Feb 2023
Which Experiences Are Influential for Your Agent? Policy Iteration with Turn-over Dropout
Takuya Hiraoka
Takashi Onishi
Yoshimasa Tsuruoka
OffRL
29
0
0
26 Jan 2023
Explainable Deep Reinforcement Learning: State of the Art and Challenges
Explainable Deep Reinforcement Learning: State of the Art and Challenges
G. Vouros
XAI
52
77
0
24 Jan 2023
Time-Efficient Reward Learning via Visually Assisted Cluster Ranking
Time-Efficient Reward Learning via Visually Assisted Cluster Ranking
David Zhang
Micah Carroll
Andreea Bobu
Anca Dragan
32
4
0
30 Nov 2022
Global and Local Analysis of Interestingness for Competency-Aware Deep
  Reinforcement Learning
Global and Local Analysis of Interestingness for Competency-Aware Deep Reinforcement Learning
Pedro Sequeira
Jesse Hostetler
Melinda Gervasio
18
0
0
11 Nov 2022
ProtoX: Explaining a Reinforcement Learning Agent via Prototyping
ProtoX: Explaining a Reinforcement Learning Agent via Prototyping
Ronilo Ragodos
Tong Wang
Qihang Lin
Xun Zhou
24
7
0
06 Nov 2022
Reward Learning with Trees: Methods and Evaluation
Reward Learning with Trees: Methods and Evaluation
Tom Bewley
J. Lawry
Arthur G. Richards
R. Craddock
Ian Henderson
28
1
0
03 Oct 2022
MIXRTs: Toward Interpretable Multi-Agent Reinforcement Learning via Mixing Recurrent Soft Decision Trees
MIXRTs: Toward Interpretable Multi-Agent Reinforcement Learning via Mixing Recurrent Soft Decision Trees
Zichuan Liu
Zichuan Liu
Zhi Wang
Yuanyang Zhu
Chunlin Chen
66
5
0
15 Sep 2022
Explainability in reinforcement learning: perspective and position
Explainability in reinforcement learning: perspective and position
Agneza Krajna
Mario Brčič
T. Lipić
Juraj Dončević
39
27
0
22 Mar 2022
Lazy-MDPs: Towards Interpretable Reinforcement Learning by Learning When
  to Act
Lazy-MDPs: Towards Interpretable Reinforcement Learning by Learning When to Act
Alexis Jacq
Johan Ferret
Olivier Pietquin
M. Geist
32
9
0
16 Mar 2022
A Survey of Explainable Reinforcement Learning
A Survey of Explainable Reinforcement Learning
Stephanie Milani
Nicholay Topin
Manuela Veloso
Fei Fang
XAI
LRM
32
52
0
17 Feb 2022
Temporal-Spatial Causal Interpretations for Vision-Based Reinforcement
  Learning
Temporal-Spatial Causal Interpretations for Vision-Based Reinforcement Learning
Wenjie Shi
Gao Huang
Shiji Song
Cheng Wu
34
9
0
06 Dec 2021
Explainable Reinforcement Learning for Broad-XAI: A Conceptual Framework
  and Survey
Explainable Reinforcement Learning for Broad-XAI: A Conceptual Framework and Survey
Richard Dazeley
Peter Vamplew
Francisco Cruz
32
60
0
20 Aug 2021
Interpretable Machine Learning: Fundamental Principles and 10 Grand
  Challenges
Interpretable Machine Learning: Fundamental Principles and 10 Grand Challenges
Cynthia Rudin
Chaofan Chen
Zhi Chen
Haiyang Huang
Lesia Semenova
Chudi Zhong
FaML
AI4CE
LRM
59
655
0
20 Mar 2021
Learning Symbolic Rules for Interpretable Deep Reinforcement Learning
Learning Symbolic Rules for Interpretable Deep Reinforcement Learning
Zhihao Ma
Yuzheng Zhuang
Paul Weng
Hankui Zhuo
Dong Li
Wulong Liu
Jianye Hao
NAI
51
14
0
15 Mar 2021
Explainability of deep vision-based autonomous driving systems: Review
  and challenges
Explainability of deep vision-based autonomous driving systems: Review and challenges
Éloi Zablocki
H. Ben-younes
P. Pérez
Matthieu Cord
XAI
53
170
0
13 Jan 2021
Towards Robust Explanations for Deep Neural Networks
Towards Robust Explanations for Deep Neural Networks
Ann-Kathrin Dombrowski
Christopher J. Anders
K. Müller
Pan Kessel
FAtt
35
63
0
18 Dec 2020
Demystifying Deep Neural Networks Through Interpretation: A Survey
Demystifying Deep Neural Networks Through Interpretation: A Survey
Giang Dao
Minwoo Lee
FaML
FAtt
22
1
0
13 Dec 2020
Meta-trained agents implement Bayes-optimal agents
Meta-trained agents implement Bayes-optimal agents
Vladimir Mikulik
Grégoire Delétang
Tom McGrath
Tim Genewein
Miljan Martic
Shane Legg
Pedro A. Ortega
OOD
FedML
35
41
0
21 Oct 2020
A Systematic Literature Review on the Use of Deep Learning in Software
  Engineering Research
A Systematic Literature Review on the Use of Deep Learning in Software Engineering Research
Cody Watson
Nathan Cooper
David Nader-Palacio
Kevin Moran
Denys Poshyvanyk
26
111
0
14 Sep 2020
Local and Global Explanations of Agent Behavior: Integrating Strategy
  Summaries with Saliency Maps
Local and Global Explanations of Agent Behavior: Integrating Strategy Summaries with Saliency Maps
Tobias Huber
Katharina Weitz
Elisabeth André
Ofra Amir
FAtt
21
64
0
18 May 2020
Don't Explain without Verifying Veracity: An Evaluation of Explainable
  AI with Video Activity Recognition
Don't Explain without Verifying Veracity: An Evaluation of Explainable AI with Video Activity Recognition
Mahsan Nourani
Chiradeep Roy
Tahrima Rahman
Eric D. Ragan
Nicholas Ruozzi
Vibhav Gogate
AAML
15
17
0
05 May 2020
How Do You Act? An Empirical Study to Understand Behavior of Deep
  Reinforcement Learning Agents
How Do You Act? An Empirical Study to Understand Behavior of Deep Reinforcement Learning Agents
Richard Meyes
Moritz Schneider
Tobias Meisen
28
2
0
07 Apr 2020
Explaining Deep Neural Networks and Beyond: A Review of Methods and
  Applications
Explaining Deep Neural Networks and Beyond: A Review of Methods and Applications
Wojciech Samek
G. Montavon
Sebastian Lapuschkin
Christopher J. Anders
K. Müller
XAI
51
82
0
17 Mar 2020
Self-Supervised Discovering of Interpretable Features for Reinforcement
  Learning
Self-Supervised Discovering of Interpretable Features for Reinforcement Learning
Wenjie Shi
Gao Huang
Shiji Song
Zhuoyuan Wang
Tingyu Lin
Cheng Wu
SSL
28
18
0
16 Mar 2020
The Emerging Landscape of Explainable AI Planning and Decision Making
The Emerging Landscape of Explainable AI Planning and Decision Making
Tathagata Chakraborti
S. Sreedharan
S. Kambhampati
35
112
0
26 Feb 2020
How Transferable are the Representations Learned by Deep Q Agents?
How Transferable are the Representations Learned by Deep Q Agents?
Jacob Tyo
Zachary Chase Lipton
OffRL
17
6
0
24 Feb 2020
Explain Your Move: Understanding Agent Actions Using Specific and
  Relevant Feature Attribution
Explain Your Move: Understanding Agent Actions Using Specific and Relevant Feature Attribution
Nikaash Puri
Sukriti Verma
Piyush B. Gupta
Dhruv Kayastha
Shripad Deshmukh
Balaji Krishnamurthy
Sameer Singh
FAtt
AAML
19
75
0
23 Dec 2019
Interestingness Elements for Explainable Reinforcement Learning:
  Understanding Agents' Capabilities and Limitations
Interestingness Elements for Explainable Reinforcement Learning: Understanding Agents' Capabilities and Limitations
Pedro Sequeira
Melinda Gervasio
19
104
0
19 Dec 2019
Exploratory Not Explanatory: Counterfactual Analysis of Saliency Maps
  for Deep Reinforcement Learning
Exploratory Not Explanatory: Counterfactual Analysis of Saliency Maps for Deep Reinforcement Learning
Akanksha Atrey
Kaleigh Clary
David D. Jensen
FAtt
LRM
30
90
0
09 Dec 2019
Faster and Safer Training by Embedding High-Level Knowledge into Deep
  Reinforcement Learning
Faster and Safer Training by Embedding High-Level Knowledge into Deep Reinforcement Learning
Haodi Zhang
Zihang Gao
Yi Zhou
Haotong Zhang
Kaishun Wu
Fangzhen Lin
AI4CE
27
17
0
22 Oct 2019
Counterfactual States for Atari Agents via Generative Deep Learning
Counterfactual States for Atari Agents via Generative Deep Learning
Matthew Lyle Olson
Lawrence Neal
Fuxin Li
Weng-Keen Wong
CML
21
29
0
27 Sep 2019
DRLViz: Understanding Decisions and Memory in Deep Reinforcement
  Learning
DRLViz: Understanding Decisions and Memory in Deep Reinforcement Learning
Theo Jaunet
Romain Vuillemot
Christian Wolf
HAI
18
36
0
06 Sep 2019
Towards Interpretable Reinforcement Learning Using Attention Augmented
  Agents
Towards Interpretable Reinforcement Learning Using Attention Augmented Agents
Alex Mott
Daniel Zoran
Mike Chrzanowski
Daan Wierstra
Danilo Jimenez Rezende
26
188
0
06 Jun 2019
Generation of Policy-Level Explanations for Reinforcement Learning
Generation of Policy-Level Explanations for Reinforcement Learning
Nicholay Topin
Manuela Veloso
32
74
0
28 May 2019
Feature Selection and Feature Extraction in Pattern Analysis: A
  Literature Review
Feature Selection and Feature Extraction in Pattern Analysis: A Literature Review
Benyamin Ghojogh
Maria N. Samad
Sayema Asif Mashhadi
Tania Kapoor
Wahab Ali
Fakhri Karray
Mark Crowley
26
89
0
07 May 2019
Unmasking Clever Hans Predictors and Assessing What Machines Really
  Learn
Unmasking Clever Hans Predictors and Assessing What Machines Really Learn
Sebastian Lapuschkin
S. Wäldchen
Alexander Binder
G. Montavon
Wojciech Samek
K. Müller
17
996
0
26 Feb 2019
ATMSeer: Increasing Transparency and Controllability in Automated
  Machine Learning
ATMSeer: Increasing Transparency and Controllability in Automated Machine Learning
Qianwen Wang
Yao Ming
Zhihua Jin
Qiaomu Shen
Dongyu Liu
Micah J. Smith
K. Veeramachaneni
Huamin Qu
HAI
22
101
0
13 Feb 2019
Deep Neural Linear Bandits: Overcoming Catastrophic Forgetting through
  Likelihood Matching
Deep Neural Linear Bandits: Overcoming Catastrophic Forgetting through Likelihood Matching
Tom Zahavy
Shie Mannor
HAI
36
30
0
24 Jan 2019
Dopamine: A Research Framework for Deep Reinforcement Learning
Dopamine: A Research Framework for Deep Reinforcement Learning
Pablo Samuel Castro
Subhodeep Moitra
Carles Gelada
Saurabh Kumar
Marc G. Bellemare
OffRL
28
276
0
14 Dec 2018
Learning Finite State Representations of Recurrent Policy Networks
Learning Finite State Representations of Recurrent Policy Networks
Anurag Koul
S. Greydanus
Alan Fern
19
88
0
29 Nov 2018
A Multidisciplinary Survey and Framework for Design and Evaluation of
  Explainable AI Systems
A Multidisciplinary Survey and Framework for Design and Evaluation of Explainable AI Systems
Sina Mohseni
Niloofar Zarei
Eric D. Ragan
36
102
0
28 Nov 2018
Scalable agent alignment via reward modeling: a research direction
Scalable agent alignment via reward modeling: a research direction
Jan Leike
David M. Krueger
Tom Everitt
Miljan Martic
Vishal Maini
Shane Legg
34
397
0
19 Nov 2018
An initial attempt of combining visual selective attention with deep
  reinforcement learning
An initial attempt of combining visual selective attention with deep reinforcement learning
Liu Yuezhang
Ruohan Zhang
D. Ballard
29
20
0
11 Nov 2018
A Survey and Critique of Multiagent Deep Reinforcement Learning
A Survey and Critique of Multiagent Deep Reinforcement Learning
Pablo Hernandez-Leal
Bilal Kartal
Matthew E. Taylor
OffRL
48
553
0
12 Oct 2018
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