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Deep Reinforcement Learning: An Overview
v1v2v3v4v5v6 (latest)

Deep Reinforcement Learning: An Overview

25 January 2017
Yuxi Li
    OffRLVLM
ArXiv (abs)PDFHTML

Papers citing "Deep Reinforcement Learning: An Overview"

17 / 417 papers shown
Title
FlashRL: A Reinforcement Learning Platform for Flash Games
FlashRL: A Reinforcement Learning Platform for Flash Games
Per-Arne Andersen
M. G. Olsen
Ole-Christoffer Granmo
VLM
43
2
0
26 Jan 2018
Multi-timescale memory dynamics in a reinforcement learning network with
  attention-gated memory
Multi-timescale memory dynamics in a reinforcement learning network with attention-gated memory
M. Martinolli
W. Gerstner
Aditya Gilra
CLL
36
5
0
28 Dec 2017
Revisiting the Master-Slave Architecture in Multi-Agent Deep
  Reinforcement Learning
Revisiting the Master-Slave Architecture in Multi-Agent Deep Reinforcement Learning
Xiangyu Kong
Bo Xin
Fangchen Liu
Yizhou Wang
40
44
0
20 Dec 2017
Applications of Deep Learning and Reinforcement Learning to Biological
  Data
Applications of Deep Learning and Reinforcement Learning to Biological Data
M. S. M. Mahmud
M. S. Kaiser
Amir Hussain
S. Vassanelli
OffRLAI4CE
85
646
0
10 Nov 2017
Map-based Multi-Policy Reinforcement Learning: Enhancing Adaptability of
  Robots by Deep Reinforcement Learning
Map-based Multi-Policy Reinforcement Learning: Enhancing Adaptability of Robots by Deep Reinforcement Learning
A. Kume
Eiichi Matsumoto
K. Takahashi
W. Ko
Jethro Tan
69
11
0
17 Oct 2017
Recurrent Deterministic Policy Gradient Method for Bipedal Locomotion on
  Rough Terrain Challenge
Recurrent Deterministic Policy Gradient Method for Bipedal Locomotion on Rough Terrain Challenge
Doo Re Song
Chuanyu Yang
C. McGreavy
Zhibin Li
167
30
0
08 Oct 2017
Avoidance of Manual Labeling in Robotic Autonomous Navigation Through
  Multi-Sensory Semi-Supervised Learning
Avoidance of Manual Labeling in Robotic Autonomous Navigation Through Multi-Sensory Semi-Supervised Learning
Junhong Xu
Shangyue Zhu
Hanqing Guo
Shaoen Wu
SSL
31
3
0
22 Sep 2017
A Deep-Reinforcement Learning Approach for Software-Defined Networking
  Routing Optimization
A Deep-Reinforcement Learning Approach for Software-Defined Networking Routing Optimization
Giorgio Stampa
M. Arias
David Sánchez-Charles
V. Muntés-Mulero
A. Cabellos-Aparicio
63
172
0
20 Sep 2017
Models and Framework for Adversarial Attacks on Complex Adaptive Systems
Models and Framework for Adversarial Attacks on Complex Adaptive Systems
Vahid Behzadan
Arslan Munir
AAML
31
5
0
13 Sep 2017
Deep Learning for Video Game Playing
Deep Learning for Video Game Playing
Niels Justesen
Philip Bontrager
Julian Togelius
S. Risi
VLM
101
208
0
25 Aug 2017
A Deep Q-Network for the Beer Game: A Deep Reinforcement Learning
  algorithm to Solve Inventory Optimization Problems
A Deep Q-Network for the Beer Game: A Deep Reinforcement Learning algorithm to Solve Inventory Optimization Problems
Afshin Oroojlooyjadid
M. Nazari
L. Snyder
Martin Takáč
66
38
0
20 Aug 2017
A Brief Survey of Deep Reinforcement Learning
A Brief Survey of Deep Reinforcement Learning
Kai Arulkumaran
M. Deisenroth
Miles Brundage
Anil Anthony Bharath
OffRL
143
2,830
0
19 Aug 2017
Experience enrichment based task independent reward model
Experience enrichment based task independent reward model
Min Xu
OffRL
31
0
0
21 May 2017
Traffic Light Control Using Deep Policy-Gradient and Value-Function
  Based Reinforcement Learning
Traffic Light Control Using Deep Policy-Gradient and Value-Function Based Reinforcement Learning
Seyed Sajad Mousavi
Michael Schukat
Enda Howley
87
307
0
28 Apr 2017
Robust Adversarial Reinforcement Learning
Robust Adversarial Reinforcement Learning
Lerrel Pinto
James Davidson
Rahul Sukthankar
Abhinav Gupta
OOD
132
863
0
08 Mar 2017
What Would You Do? Acting by Learning to Predict
What Would You Do? Acting by Learning to Predict
Adam W. Tow
Niko Sünderhauf
S. Shirazi
Michael Milford
Jurgen Leitner
LM&Ro
47
6
0
08 Mar 2017
DeepStack: Expert-Level Artificial Intelligence in No-Limit Poker
DeepStack: Expert-Level Artificial Intelligence in No-Limit Poker
Matej Moravcík
Martin Schmid
Neil Burch
Viliam Lisý
Dustin Morrill
Nolan Bard
Trevor Davis
Kevin Waugh
Michael Bradley Johanson
Michael Bowling
BDL
261
913
0
06 Jan 2017
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