- Optimal Control
- Safe Control
- Game Theory
- Sequential Learning
- Learning from Demonstrations
- Motion Planning
- (book) Dynamic Programming, Bellman R. (1957).
- (book) Dynamic Programming and Optimal Control, Volumes 1 and 2, Bertsekas D. (1995).
- (book) Markov Decision Processes - Discrete Stochastic Dynamic Programming, Puterman M. (1995).
- An Upper Bound on the Loss from Approximate Optimal-Value Functions, Singh S., Yee R. (1994).
- Stochastic optimization of sailing trajectories in an upwind regatta, Dalang R. et al. (2015).
ExpectiMinimax
Optimal strategy in games with chance nodes, MelkΓ³ E., Nagy B. (2007).Sparse sampling
A sparse sampling algorithm for near-optimal planning in large Markov decision processes, Kearns M. et al. (2002).MCTS
Efficient Selectivity and Backup Operators in Monte-Carlo Tree Search, RΓ©mi Coulom, SequeL (2006).UCT
Bandit based Monte-Carlo Planning, Kocsis L., SzepesvΓ‘ri C. (2006).- Bandit Algorithms for Tree Search, Coquelin P-A., Munos R. (2007).
OPD
Optimistic Planning for Deterministic Systems, Hren J., Munos R. (2008).OLOP
Open Loop Optimistic Planning, Bubeck S., Munos R. (2010).SOOP
Optimistic Planning for Continuous-Action Deterministic Systems, BuΕoniu L. et al. (2011).OPSS
Optimistic planning for sparsely stochastic systems, L. BuΕoniu, R. Munos, B. De Schutter, and R. Babuska (2011).HOOT
Sample-Based Planning for Continuous ActionMarkov Decision Processes, Mansley C., Weinstein A., Littman M. (2011).HOLOP
Bandit-Based Planning and Learning inContinuous-Action Markov Decision Processes, Weinstein A., Littman M. (2012).BRUE
Simple Regret Optimization in Online Planning for Markov Decision Processes, Feldman Z. and Domshlak C. (2014).LGP
Logic-Geometric Programming: An Optimization-Based Approach to Combined Task and Motion Planning, Toussaint M. (2015). ποΈAlphaGo
Mastering the game of Go with deep neural networks and tree search, Silver D. et al. (2016).AlphaGo Zero
Mastering the game of Go without human knowledge, Silver D. et al. (2017).AlphaZero
Mastering Chess and Shogi by Self-Play with a General Reinforcement Learning Algorithm, Silver D. et al. (2017).TrailBlazer
Blazing the trails before beating the path: Sample-efficient Monte-Carlo planning, Grill J. B., Valko M., Munos R. (2017).MCTSnets
Learning to search with MCTSnets, Guez A. et al. (2018).ADI
Solving the Rubik's Cube Without Human Knowledge, McAleer S. et al. (2018).OPC/SOPC
Continuous-action planning for discounted inο¬nite-horizon nonlinear optimal control with Lipschitz values, BuΕoniu L., Pall E., Munos R. (2018).- Real-time tree search with pessimistic scenarios: Winning the NeurIPS 2018 Pommerman Competition, Osogami T., Takahashi T. (2019)
- (book) The Mathematical Theory of Optimal Processes, L. S. Pontryagin, Boltyanskii V. G., Gamkrelidze R. V., and Mishchenko E. F. (1962).
- (book) Constrained Control and Estimation, Goodwin G. (2005).
PIΒ²
A Generalized Path Integral Control Approach to Reinforcement Learning, Theodorou E. et al. (2010).PIΒ²-CMA
Path Integral Policy Improvement with Covariance Matrix Adaptation, Stulp F., Sigaud O. (2010).iLQG
A generalized iterative LQG method for locally-optimal feedback control of constrained nonlinear stochastic systems, Todorov E. (2005).iLQG+
Synthesis and stabilization of complex behaviors through online trajectory optimization, Tassa Y. (2012).
- (book) Model Predictive Control, Camacho E. (1995).
- (book) Predictive Control With Constraints, Maciejowski J. M. (2002).
- Linear Model Predictive Control for Lane Keeping and Obstacle Avoidance on Low Curvature Roads, Turri V. et al. (2013).
MPCC
Optimization-based autonomous racing of 1:43 scale RC cars, Liniger A. et al. (2014). ποΈ | ποΈMIQP
Optimal trajectory planning for autonomous driving integrating logical constraints: An MIQP perspective, Qian X., AltchΓ© F., Bender P., Stiller C. de La Fortelle A. (2016).
- Minimax analysis of stochastic problems, Shapiro A., Kleywegt A. (2002).
Robust DP
Robust Dynamic Programming, Iyengar G. (2005).- Robust Planning and Optimization, Laumanns M. (2011). (lecture notes)
- Robust Markov Decision Processes, Wiesemann W., Kuhn D., Rustem B. (2012).
- Safe and Robust Learning Control with Gaussian Processes, Berkenkamp F., Schoellig A. (2015). ποΈ
Tube-MPPI
Robust Sampling Based Model Predictive Control with Sparse Objective Information, Williams G. et al. (2018). ποΈ
- A Comprehensive Survey on Safe Reinforcement Learning, GarcΓa J., FernΓ‘ndez F. (2015).
RA-QMDP
Risk-averse Behavior Planning for Autonomous Driving under Uncertainty, Naghshvar M. et al. (2018).StoROO
X-Armed Bandits: Optimizing Quantiles and Other Risks, Torossian L., Garivier A., Picheny V. (2019).- Worst Cases Policy Gradients, Tang Y. C. et al. (2019).
ICS
Will the Driver Seat Ever Be Empty?, Fraichard T. (2014).SafeOPT
Safe Controller Optimization for Quadrotors with Gaussian Processes, Berkenkamp F., Schoellig A., Krause A. (2015). ποΈSafeMDP
Safe Exploration in Finite Markov Decision Processes with Gaussian Processes, Turchetta M., Berkenkamp F., Krause A. (2016).RSS
On a Formal Model of Safe and Scalable Self-driving Cars, Shalev-Shwartz S. et al. (2017).CPO
Constrained Policy Optimization, Achiam J., Held D., Tamar A., Abbeel P. (2017).RCPO
Reward Constrained Policy Optimization, Tessler C., Mankowitz D., Mannor S. (2018).BFTQ
A Fitted-Q Algorithm for Budgeted MDPs, Carrara N. et al. (2018).SafeMPC
Learning-based Model Predictive Control for Safe Exploration, Koller T, Berkenkamp F., Turchetta M. Krause A. (2018).CCE
Constrained Cross-Entropy Method for Safe Reinforcement Learning, Wen M., Topcu U. (2018).LTL-RL
Reinforcement Learning with Probabilistic Guarantees for Autonomous Driving, Bouton M. et al. (2019).- Safe Reinforcement Learning with Scene Decomposition for Navigating Complex Urban Environments, Bouton M. et al. (2019).
- Batch Policy Learning under Constraints, Le H., Voloshin C., Yue Y. (2019).
- Safely Learning to Control the Constrained Linear Quadratic Regulator, Dean S. et al (2019).
- Learning to Walk in the Real World with Minimal Human Effort, Ha S. et al. (2020) ποΈ
- Responsive Safety in Reinforcement Learning by PID Lagrangian Methods, Stooke A., Achiam J., Abbeel P. (2020).
HJI-reachability
Safe learning for control: Combining disturbance estimation, reachability analysis and reinforcement learning with systematic exploration, Heidenreich C. (2017).MPC-HJI
On Infusing Reachability-Based Safety Assurance within Probabilistic Planning Frameworks for Human-Robot Vehicle Interactions, Leung K. et al. (2018).- A General Safety Framework for Learning-Based Control in Uncertain Robotic Systems, Fisac J. et al (2017). ποΈ
- Safe Model-based Reinforcement Learning with Stability Guarantees, Berkenkamp F. et al. (2017).
Lyapunov-Net
Safe Interactive Model-Based Learning, Gallieri M. et al. (2019).- Enforcing robust control guarantees within neural network policies, Donti P. et al. (2021).
- Simulation of Controlled Uncertain Nonlinear Systems, Tibken B., Hofer E. (1995).
- Trajectory computation of dynamic uncertain systems, Adrot O., Flaus J-M. (2002).
- Simulation of Uncertain Dynamic Systems Described By Interval Models: a Survey, Puig V. et al. (2005).
- Design of interval observers for uncertain dynamical systems, Efimov D., RaΓ―ssi T. (2016).
- Hierarchical Game-Theoretic Planning for Autonomous Vehicles, Fisac J. et al. (2018).
- Efficient Iterative Linear-Quadratic Approximations for Nonlinear Multi-Player General-Sum Differential Games, Fridovich-Keil D. et al. (2019). ποΈ
TS
On the Likelihood that One Unknown Probability Exceeds Another in View of the Evidence of Two Samples, Thompson W. (1933).- Exploration and Exploitation in Organizational Learning, March J. (1991).
UCB1 / UCB2
Finite-time Analysis of the Multiarmed Bandit Problem, Auer P., Cesa-Bianchi N., Fischer P. (2002).Empirical Bernstein / UCB-V
Exploration-exploitation tradeoff using variance estimates in multi-armed bandits, Audibert J-Y, Munos R., Szepesvari C. (2009).- Empirical Bernstein Bounds and Sample Variance Penalization, Maurer A., Ponti M. (2009).
- An Empirical Evaluation of Thompson Sampling, Chapelle O., Li L. (2011).
kl-UCB
The KL-UCB Algorithm for Bounded Stochastic Bandits and Beyond, Garivier A., CappΓ© O. (2011).KL-UCB
Kullback-Leibler Upper Confidence Bounds for Optimal Sequential Allocation, CappΓ© O. et al. (2013).OFUL
Improved Algorithms for Linear Stochastic Bandits, Abbasi-yadkori Y., Pal D., SzepesvΓ‘ri C. (2011).IDS
Information Directed Sampling and Bandits with Heteroscedastic Noise Kirschner J., Krause A. (2018).- Self-normalization techniques for streaming confident regression, Maillard O.-A. (2017).
Successive Elimination
Action Elimination and Stopping Conditions for the Multi-Armed Bandit and Reinforcement Learning Problems, Even-Dar E. et al. (2006).LUCB
PAC Subset Selection in Stochastic Multi-armed Bandits, Kalyanakrishnan S. et al. (2012).UGapE
Best Arm Identification: A Unified Approach to Fixed Budget and Fixed Confidence, Gabillon V., Ghavamzadeh M., Lazaric A. (2012).Sequential Halving
Almost Optimal Exploration in Multi-Armed Bandits, Karnin Z. et al (2013).M-LUCB / M-Racing
Maximin Action Identification: A New Bandit Framework for Games, Garivier A., Kaufmann E., Koolen W. (2016).Track-and-Stop
Optimal Best Arm Identification with Fixed Confidence, Garivier A., Kaufmann E. (2016).LUCB-micro
Structured Best Arm Identification with Fixed Confidence, Huang R. et al. (2017).
GP-UCB
Gaussian Process Optimization in the Bandit Setting: No Regret and Experimental Design, Srinivas N., Krause A., Kakade S., Seeger M. (2009).HOO
XβArmed Bandits, Bubeck S., Munos R., Stoltz G., Szepesvari C. (2009).DOO/SOO
Optimistic Optimization of a Deterministic Function without the Knowledge of its Smoothness, Munos R. (2011).StoOO
From Bandits to Monte-Carlo Tree Search: The Optimistic Principle Applied to Optimization and Planning, Munos R. (2014).StoSOO
Stochastic Simultaneous Optimistic Optimization, Valko M., Carpentier A., Munos R. (2013).POO
Black-box optimization of noisy functions with unknown smoothness, Grill J-B., Valko M., Munos R. (2015).EI-GP
Bayesian Optimization in AlphaGo, Chen Y. et al. (2018)
- Reinforcement learning: A survey, Kaelbling L. et al. (1996).
- Expected mistake bound model for on-line reinforcement learning, Fiechter C-N. (1997).
UCRL2
Near-optimal Regret Bounds for Reinforcement Learning, Jaksch T. (2010).PSRL
Why is Posterior Sampling Better than Optimism for Reinforcement Learning?, Osband I., Van Roy B. (2016).UCBVI
Minimax Regret Bounds for Reinforcement Learning, Azar M., Osband I., Munos R. (2017).Q-Learning-UCB
Is Q-Learning Provably Efficient?, Jin C., Allen-Zhu Z., Bubeck S., Jordan M. (2018).LSVI-UCB
Provably Efficient Reinforcement Learning with Linear Function Approximation, Jin C., Yang Z., Wang Z., Jordan M. (2019).- Lipschitz Continuity in Model-based Reinforcement Learning, Asadi K. et al (2018).
- On Function Approximation in Reinforcement Learning: Optimism in the Face of Large State Spaces, Yang Z., Jin C., Wang Z., Wang M., Jordan M. (2021)
QVI
On the Sample Complexity of Reinforcement Learning with a Generative Model, Azar M., Munos R., Kappen B. (2012).- Model-Based Reinforcement Learning with a Generative Model is Minimax Optimal, Agarwal A. et al. (2019).
- Policy Gradient Methods for Reinforcement Learning with Function Approximation, Sutton R. et al (2000).
- Approximately Optimal Approximate Reinforcement Learning, Kakade S., Langford J. (2002).
- On the Theory of Policy Gradient Methods: Optimality, Approximation, and Distribution Shift, Agarwal A. et al. (2019)
- PC-PG: Policy Cover Directed Exploration for Provable Policy Gradient Learning, Agarwal A. et al. (2020)
- PAC Adaptive Control of Linear Systems, Fiechter C.-N. (1997)
OFU-LQ
Regret Bounds for the Adaptive Control of Linear Quadratic Systems, Abbasi-Yadkori Y., Szepesvari C. (2011).TS-LQ
Improved Regret Bounds for Thompson Sampling in Linear Quadratic Control Problems, Abeille M., Lazaric A. (2018).- Exploration-Exploitation with Thompson Sampling in Linear Systems, Abeille M. (2017). (phd thesis)
Coarse-Id
On the Sample Complexity of the Linear Quadratic Regulator, Dean S., Mania H., Matni N., Recht B., Tu S. (2017).- Regret Bounds for Robust Adaptive Control of the Linear Quadratic Regulator, Dean S. et al (2018).
- Robust exploration in linear quadratic reinforcement learning, Umenberger J. et al (2019).
- Online Control with Adversarial Disturbances, Agarwal N. et al (2019).
- Logarithmic Regret for Online Control, Agarwal N. et al (2019).
NFQ
Neural fitted Q iteration - First experiences with a data efficient neural Reinforcement Learning method, Riedmiller M. (2005).DQN
Playing Atari with Deep Reinforcement Learning, Mnih V. et al. (2013). ποΈDDQN
Deep Reinforcement Learning with Double Q-learning, van Hasselt H., Silver D. et al. (2015).DDDQN
Dueling Network Architectures for Deep Reinforcement Learning, Wang Z. et al. (2015). ποΈPDDDQN
Prioritized Experience Replay, Schaul T. et al. (2015).NAF
Continuous Deep Q-Learning with Model-based Acceleration, Gu S. et al. (2016).Rainbow
Rainbow: Combining Improvements in Deep Reinforcement Learning, Hessel M. et al. (2017).Ape-X DQfD
Observe and Look Further: Achieving Consistent Performance on Atari, Pohlen T. et al. (2018). ποΈ
REINFORCE
Simple Statistical Gradient-Following Algorithms for Connectionist Reinforcement Learning, Williams R. (1992).Natural Gradient
A Natural Policy Gradient, Kakade S. (2002).- Policy Gradient Methods for Robotics, Peters J., Schaal S. (2006).
TRPO
Trust Region Policy Optimization, Schulman J. et al. (2015). ποΈPPO
Proximal Policy Optimization Algorithms, Schulman J. et al. (2017). ποΈDPPO
Emergence of Locomotion Behaviours in Rich Environments, Heess N. et al. (2017). ποΈ
AC
Policy Gradient Methods for Reinforcement Learning with Function Approximation, Sutton R. et al. (1999).NAC
Natural Actor-Critic, Peters J. et al. (2005).DPG
Deterministic Policy Gradient Algorithms, Silver D. et al. (2014).DDPG
Continuous Control With Deep Reinforcement Learning, Lillicrap T. et al. (2015). ποΈ 1 |Β 2 | 3 | 4MACE
Terrain-Adaptive Locomotion Skills Using Deep Reinforcement Learning, Peng X., Berseth G., van de Panne M. (2016). ποΈ | ποΈA3C
Asynchronous Methods for Deep Reinforcement Learning, Mnih V. et al 2016. ποΈ 1 | 2 |Β 3SAC
Soft Actor-Critic : Off-Policy Maximum Entropy Deep Reinforcement Learning with a Stochastic Actor, Haarnoja T. et al. (2018). ποΈ
CEM
Learning Tetris Using the Noisy Cross-Entropy Method, Szita I., LΓΆrincz A. (2006). ποΈCMAES
Completely Derandomized Self-Adaptation in Evolution Strategies, Hansen N., Ostermeier A. (2001).NEAT
Evolving Neural Networks through Augmenting Topologies, Stanley K. (2002). ποΈiCEM
Sample-efficient Cross-Entropy Method for Real-time Planning, Pinneri C. et al. (2020).
Dyna
Integrated Architectures for Learning, Planning, and Reacting Based on Approximating Dynamic Programming, Sutton R. (1990).PILCO
PILCO: A Model-Based and Data-Efficient Approach to Policy Search, Deisenroth M., Rasmussen C. (2011). (talk)DBN
Probabilistic MDP-behavior planning for cars, Brechtel S. et al. (2011).GPS
End-to-End Training of Deep Visuomotor Policies, Levine S. et al. (2015). ποΈDeepMPC
DeepMPC: Learning Deep Latent Features for Model Predictive Control, Lenz I. et al. (2015). ποΈSVG
Learning Continuous Control Policies by Stochastic Value Gradients, Heess N. et al. (2015). ποΈFARNN
Nonlinear Systems Identification Using Deep Dynamic Neural Networks, Ogunmolu O. et al. (2016).- Optimal control with learned local models: Application to dexterous manipulation, Kumar V. et al. (2016). ποΈ
BPTT
Long-term Planning by Short-term Prediction, Shalev-Shwartz S. et al. (2016). ποΈ 1 | 2- Deep visual foresight for planning robot motion, Finn C., Levine S. (2016). ποΈ
VIN
Value Iteration Networks, Tamar A. et al (2016). ποΈVPN
Value Prediction Network, Oh J. et al. (2017).DistGBP
Model-Based Planning with Discrete and Continuous Actions, Henaff M. et al. (2017). ποΈ 1 | 2- Prediction and Control with Temporal Segment Models, Mishra N. et al. (2017).
Predictron
The Predictron: End-To-End Learning and Planning, Silver D. et al. (2017). ποΈMPPI
Information Theoretic MPC for Model-Based Reinforcement Learning, Williams G. et al. (2017). ποΈ- Learning Real-World Robot Policies by Dreaming, Piergiovanni A. et al. (2018).
- Coupled Longitudinal and Lateral Control of a Vehicle using Deep Learning, Devineau G., Polack P., AlchtΓ© F., Moutarde F. (2018) ποΈ
PlaNet
Learning Latent Dynamics for Planning from Pixels, Hafner et al. (2018). ποΈNeuralLander
Neural Lander: Stable Drone Landing Control using Learned Dynamics, Shi G. et al. (2018). ποΈDBN+POMCP
Towards Human-Like Prediction and Decision-Making for Automated Vehicles in Highway Scenarios , Sierra Gonzalez D. (2019).- Planning with Goal-Conditioned Policies, Nasiriany S. et al. (2019). ποΈ
MuZero
Mastering Atari, Go, Chess and Shogi by Planning with a Learned Model, Schrittwiese J. et al. (2019).BADGR
BADGR: An Autonomous Self-Supervised Learning-Based Navigation System, Kahn G., Abbeel P., Levine S. (2020). ποΈH-UCRL
Efficient Model-Based Reinforcement Learning through Optimistic Policy Search and Planning, Curi S., Berkenkamp F., Krause A. (2020).
- Combating Reinforcement Learning's Sisyphean Curse with Intrinsic Fear, Lipton Z. et al. (2016).
Pseudo-count
Unifying Count-Based Exploration and Intrinsic Motivation, Bellemare M. et al (2016). ποΈHER
Hindsight Experience Replay, Andrychowicz M. et al. (2017). ποΈVHER
Visual Hindsight Experience Replay, Sahni H. et al. (2019).RND
Exploration by Random Network Distillation, Burda Y. et al. (OpenAI) (2018). ποΈGo-Explore
Go-Explore: a New Approach for Hard-Exploration Problems, Ecoffet A. et al. (Uber) (2018). ποΈC51-IDS
Information-Directed Exploration for Deep Reinforcement Learning, Nikolov N., Kirschner J., Berkenkamp F., Krause A. (2019).Plan2Explore
Planning to Explore via Self-Supervised World Models, Sekar R. et al. (2020). ποΈRIDE
RIDE: Rewarding Impact-Driven Exploration for Procedurally-Generated Environments, Raileanu R., RocktΓ€schel T., (2020).
- Between MDPs and semi-MDPs: A framework for temporal abstraction in reinforcement learning, Sutton R. et al. (1999).
- Intrinsically motivated learning of hierarchical collections of skills, Barto A. et al. (2004).
OC
The Option-Critic Architecture, Bacon P-L., Harb J., Precup D. (2016).- Learning and Transfer of Modulated Locomotor Controllers, Heess N. et al. (2016). ποΈ
- Safe, Multi-Agent, Reinforcement Learning for Autonomous Driving, Shalev-Shwartz S. et al. (2016).
FuNs
FeUdal Networks for Hierarchical Reinforcement Learning, Vezhnevets A. et al. (2017).- Combining Neural Networks and Tree Search for Task and Motion Planning in Challenging Environments, Paxton C. et al. (2017). ποΈ
DeepLoco
DeepLoco: Dynamic Locomotion Skills Using Hierarchical Deep Reinforcement Learning , Peng X. et al. (2017). ποΈ | ποΈ- Hierarchical Policy Design for Sample-Efficient Learning of Robot Table Tennis Through Self-Play, Mahjourian R. et al (2018). ποΈ
DAC
DAC: The Double Actor-Critic Architecture for Learning Options, Zhang S., Whiteson S. (2019).- Multi-Agent Manipulation via Locomotion using Hierarchical Sim2Real, Nachum O. et al (2019). ποΈ
- SoftCon: Simulation and Control of Soft-Bodied Animals with Biomimetic Actuators, Min S. et al. (2020). ποΈ
H-REIL
Reinforcement Learning based Control of Imitative Policies for Near-Accident Driving, Cao Z. et al. (2020). ποΈ 1, 2
PBVI
Point-based Value Iteration: An anytime algorithm for POMDPs, Pineau J. et al. (2003).cPBVI
Point-Based Value Iteration for Continuous POMDPs, Porta J. et al. (2006).POMCP
Monte-Carlo Planning in Large POMDPs, Silver D., Veness J. (2010).- A POMDP Approach to Robot Motion Planning under Uncertainty, Du Y. et al. (2010).
- Probabilistic Online POMDP Decision Making for Lane Changes in Fully Automated Driving, Ulbrich S., Maurer M. (2013).
- Solving Continuous POMDPs: Value Iteration with Incremental Learning of an Efficient Space Representation, Brechtel S. et al. (2013).
- Probabilistic Decision-Making under Uncertainty for Autonomous Driving using Continuous POMDPs, Brechtel S. et al. (2014).
MOMDP
Intention-Aware Motion Planning, Bandyopadhyay T. et al. (2013).DNC
Hybrid computing using a neural network with dynamic external memory, Graves A. et al (2016). ποΈ- The value of inferring the internal state of traffic participants for autonomous freeway driving, Sunberg Z. et al. (2017).
- Belief State Planning for Autonomously Navigating Urban Intersections, Bouton M., Cosgun A., Kochenderfer M. (2017).
- Scalable Decision Making with Sensor Occlusions for Autonomous Driving, Bouton M. et al. (2018).
- Probabilistic Decision-Making at Road Intersections: Formulation and Quantitative Evaluation, Barbier M., Laugier C., Simonin O., Ibanez J. (2018).
- Beauty and the Beast: Optimal Methods Meet Learning for Drone Racing, Kaufmann E. et al. (2018). ποΈ
social perception
Behavior Planning of Autonomous Cars with Social Perception, Sun L. et al (2019).
IT&E
Robots that can adapt like animals, Cully A., Clune J., Tarapore D., Mouret J-B. (2014). ποΈMAML
Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks, Finn C., Abbeel P., Levine S. (2017). ποΈ- Virtual to Real Reinforcement Learning for Autonomous Driving, Pan X. et al. (2017). ποΈ
- Sim-to-Real: Learning Agile Locomotion For Quadruped Robots, Tan J. et al. (2018). ποΈ
ME-TRPO
Model-Ensemble Trust-Region Policy Optimization, Kurutach T. et al. (2018). ποΈ- Kickstarting Deep Reinforcement Learning, Schmitt S. et al. (2018).
- Learning Dexterous In-Hand Manipulation, OpenAI (2018). ποΈ
GrBAL / ReBAL
Learning to Adapt in Dynamic, Real-World Environments Through Meta-Reinforcement Learning, Nagabandi A. et al. (2018). ποΈ- Learning agile and dynamic motor skills for legged robots, Hwangbo J. et al. (ETH Zurich / Intel ISL) (2019). ποΈ
- Robust Recovery Controller for a Quadrupedal Robot using Deep Reinforcement Learning, Lee J., Hwangbo J., Hutter M. (ETH Zurich RSL) (2019)
IT&E
Learning and adapting quadruped gaits with the "Intelligent Trial & Error" algorithm, Dalin E., Desreumaux P., Mouret J-B. (2019). ποΈFAMLE
Fast Online Adaptation in Robotics through Meta-Learning Embeddings of Simulated Priors, Kaushik R., Anne T., Mouret J-B. (2020). ποΈ- Robust Deep Reinforcement Learning against Adversarial Perturbations on Observations, Zhang H. et al (2020).
- Learning quadrupedal locomotion over challenging terrain, Lee J. et al. (2020). ποΈ
Minimax-Q
Markov games as a framework for multi-agent reinforcement learning, M. Littman (1994).- Autonomous Agents Modelling Other Agents: A Comprehensive Survey and Open Problems, Albrecht S., Stone P. (2017).
MILP
Time-optimal coordination of mobile robots along specified paths, AltchΓ© F. et al. (2016). ποΈMIQP
An Algorithm for Supervised Driving of Cooperative Semi-Autonomous Vehicles, AltchΓ© F. et al. (2017). ποΈSA-CADRL
Socially Aware Motion Planning with Deep Reinforcement Learning, Chen Y. et al. (2017). ποΈ- Multipolicy decision-making for autonomous driving via changepoint-based behavior prediction: Theory and experiment, Galceran E. et al. (2017).
- Online decision-making for scalable autonomous systems, Wray K. et al. (2017).
MAgent
MAgent: A Many-Agent Reinforcement Learning Platform for Artificial Collective Intelligence, Zheng L. et al. (2017). ποΈ- Cooperative Motion Planning for Non-Holonomic Agents with Value Iteration Networks, Rehder E. et al. (2017).
MPPO
Towards Optimally Decentralized Multi-Robot Collision Avoidance via Deep Reinforcement Learning, Long P. et al. (2017). ποΈCOMA
Counterfactual Multi-Agent Policy Gradients, Foerster J. et al. (2017).MADDPG
Multi-Agent Actor-Critic for Mixed Cooperative-Competitive Environments, Lowe R. et al (2017).FTW
Human-level performance in first-person multiplayer games with population-based deep reinforcement learning, Jaderberg M. et al. (2018). ποΈ- Towards Learning Multi-agent Negotiations via Self-Play, Tang Y. C. (2020).
- Variable Resolution Discretization in Optimal Control, Munos R., Moore A. (2002). ποΈ
DeepDriving
DeepDriving: Learning Affordance for Direct Perception in Autonomous Driving, Chen C. et al. (2015). ποΈ- On the Sample Complexity of End-to-end Training vs. Semantic Abstraction Training, Shalev-Shwartz S. et al. (2016).
- Learning sparse representations in reinforcement learning with sparse coding, Le L., Kumaraswamy M., White M. (2017).
- World Models, Ha D., Schmidhuber J. (2018). ποΈ
- Learning to Drive in a Day, Kendall A. et al. (2018). ποΈ
MERLIN
Unsupervised Predictive Memory in a Goal-Directed Agent, Wayne G. et al. (2018). ποΈ 1 | 2 | 3 | 4 | 5 | 6- Variational End-to-End Navigation and Localization, Amini A. et al. (2018). ποΈ
- Making Sense of Vision and Touch: Self-Supervised Learning of Multimodal Representations for Contact-Rich Tasks, Lee M. et al. (2018). ποΈ
- Deep Neuroevolution of Recurrent and Discrete World Models, Risi S., Stanley K.O. (2019). ποΈ
FERM
A Framework for Efficient Robotic Manipulation, Zhan A., Zhao R. et al. (2021).
- Is the Bellman residual a bad proxy?, Geist M., Piot B., Pietquin O. (2016).
- Deep Reinforcement Learning that Matters, Henderson P. et al. (2017).
- Automatic Bridge Bidding Using Deep Reinforcement Learning, Yeh C. and Lin H. (2016).
- Shared Autonomy via Deep Reinforcement Learning, Reddy S. et al. (2018). ποΈ
- Reinforcement Learning and Control as Probabilistic Inference: Tutorial and Review, Levine S. (2018).
- The Value Function Polytope in Reinforcement Learning, Dadashi R. et al. (2019).
- On Value Functions and the Agent-Environment Boundary, Jiang N. (2019).
- How to Train Your Robot with Deep Reinforcement Learning; Lessons We've Learned, Ibartz J. et al (2021).
DAgger
A Reduction of Imitation Learning and Structured Predictionto No-Regret Online Learning, Ross S., Gordon G., Bagnell J. A. (2011).QMDP-RCNN
Reinforcement Learning via Recurrent Convolutional Neural Networks, Shankar T. et al. (2016). (talk)DQfD
Learning from Demonstrations for Real World Reinforcement Learning, Hester T. et al. (2017). ποΈ- Find Your Own Way: Weakly-Supervised Segmentation of Path Proposals for Urban Autonomy, Barnes D., Maddern W., Posner I. (2016). ποΈ
GAIL
Generative Adversarial Imitation Learning, Ho J., Ermon S. (2016).- From perception to decision: A data-driven approach to end-to-end motion planning for autonomous ground robots, Pfeiffer M. et al. (2017). ποΈ
Branched
End-to-end Driving via Conditional Imitation Learning, Codevilla F. et al. (2017). ποΈ | talkUPN
Universal Planning Networks, Srinivas A. et al. (2018). ποΈDeepMimic
DeepMimic: Example-Guided Deep Reinforcement Learning of Physics-Based Character Skills, Peng X. B. et al. (2018). ποΈR2P2
Deep Imitative Models for Flexible Inference, Planning, and Control, Rhinehart N. et al. (2018). ποΈ- Learning Agile Robotic Locomotion Skills by Imitating Animals, Bin Peng X. et al (2020). ποΈ
- Deep Imitative Models for Flexible Inference, Planning, and Control, Rhinehart N., McAllister R., Levine S. (2020).
- ALVINN, an autonomous land vehicle in a neural network, Pomerleau D. (1989).
- End to End Learning for Self-Driving Cars, Bojarski M. et al. (2016). ποΈ
- End-to-end Learning of Driving Models from Large-scale Video Datasets, Xu H., Gao Y. et al. (2016). ποΈ
- End-to-End Deep Learning for Steering Autonomous Vehicles Considering Temporal Dependencies, Eraqi H. et al. (2017).
- Driving Like a Human: Imitation Learning for Path Planning using Convolutional Neural Networks, Rehder E. et al. (2017).
- Imitating Driver Behavior with Generative Adversarial Networks, Kuefler A. et al. (2017).
PS-GAIL
Multi-Agent Imitation Learning for Driving Simulation, Bhattacharyya R. et al. (2018). ποΈ- Deep Imitation Learning for Autonomous Driving in Generic Urban Scenarios with Enhanced Safety, Chen J. et al. (2019).
Projection
Apprenticeship learning via inverse reinforcement learning, Abbeel P., Ng A. (2004).MMP
Maximum margin planning, Ratliff N. et al. (2006).BIRL
Bayesian inverse reinforcement learning, Ramachandran D., Amir E. (2007).MEIRL
Maximum Entropy Inverse Reinforcement Learning, Ziebart B. et al. (2008).LEARCH
Learning to search: Functional gradient techniques for imitation learning, Ratliff N., Siver D. Bagnell A. (2009).CIOC
Continuous Inverse Optimal Control with Locally Optimal Examples, Levine S., Koltun V. (2012). ποΈMEDIRL
Maximum Entropy Deep Inverse Reinforcement Learning, Wulfmeier M. (2015).GCL
Guided Cost Learning: Deep Inverse Optimal Control via Policy Optimization, Finn C. et al. (2016). ποΈRIRL
Repeated Inverse Reinforcement Learning, Amin K. et al. (2017).- Bridging the Gap Between Imitation Learning and Inverse Reinforcement Learning, Piot B. et al. (2017).
- Apprenticeship Learning for Motion Planning, with Application to Parking Lot Navigation, Abbeel P. et al. (2008).
- Navigate like a cabbie: Probabilistic reasoning from observed context-aware behavior, Ziebart B. et al. (2008).
- Planning-based Prediction for Pedestrians, Ziebart B. et al. (2009). ποΈ
- Learning for autonomous navigation, Bagnell A. et al. (2010).
- Learning Autonomous Driving Styles and Maneuvers from Expert Demonstration, Silver D. et al. (2012).
- Learning Driving Styles for Autonomous Vehicles from Demonstration, Kuderer M. et al. (2015).
- Learning to Drive using Inverse Reinforcement Learning and Deep Q-Networks, Sharifzadeh S. et al. (2016).
- Watch This: Scalable Cost-Function Learning for Path Planning in Urban Environments, Wulfmeier M. (2016). ποΈ
- Planning for Autonomous Cars that Leverage Effects on Human Actions, Sadigh D. et al. (2016).
- A Learning-Based Framework for Handling Dilemmas in Urban Automated Driving, Lee S., Seo S. (2017).
- Learning Trajectory Prediction with Continuous Inverse Optimal Control via Langevin Sampling of Energy-Based Models, Xu Y. et al. (2019).
- Analyzing the Suitability of Cost Functions for Explaining and Imitating Human Driving Behavior based on Inverse Reinforcement Learning, Naumann M. et al (2020).
Dijkstra
A Note on Two Problems in Connexion with Graphs, Dijkstra E. W. (1959).A*
A Formal Basis for the Heuristic Determination of Minimum Cost Paths , Hart P. et al. (1968).- Planning Long Dynamically-Feasible Maneuvers For Autonomous Vehicles, Likhachev M., Ferguson D. (2008).
- Optimal Trajectory Generation for Dynamic Street Scenarios in a Frenet Frame, Werling M., Kammel S. (2010). ποΈ
- 3D perception and planning for self-driving and cooperative automobiles, Stiller C., Ziegler J. (2012).
- Motion Planning under Uncertainty for On-Road Autonomous Driving, Xu W. et al. (2014).
- Monte Carlo Tree Search for Simulated Car Racing, Fischer J. et al. (2015). ποΈ
RRT*
Sampling-based Algorithms for Optimal Motion Planning, Karaman S., Frazzoli E. (2011). ποΈLQG-MP
LQG-MP: Optimized Path Planning for Robots with Motion Uncertainty and Imperfect State Information, van den Berg J. et al. (2010).- Motion Planning under Uncertainty using Differential Dynamic Programming in Belief Space, van den Berg J. et al. (2011).
- Rapidly-exploring Random Belief Trees for Motion Planning Under Uncertainty, Bry A., Roy N. (2011).
PRM-RL
PRM-RL: Long-range Robotic Navigation Tasks by Combining Reinforcement Learning and Sampling-based Planning, Faust A. et al. (2017).
- Trajectory planning for Bertha - A local, continuous method, Ziegler J. et al. (2014).
- Learning Attractor Landscapes for Learning Motor Primitives, Ijspeert A. et al. (2002).
- Online Motion Planning based on Nonlinear Model Predictive Control with Non-Euclidean Rotation Groups, RΓΆsmann C. et al (2020).
PF
Real-time obstacle avoidance for manipulators and mobile robots, Khatib O. (1986).VFH
The Vector Field Histogram - Fast Obstacle Avoidance For Mobile Robots, Borenstein J. (1991).VFH+
VFH+: Reliable Obstacle Avoidance for Fast Mobile Robots, Ulrich I., Borenstein J. (1998).Velocity Obstacles
Motion planning in dynamic environments using velocity obstacles, Fiorini P., Shillert Z. (1998).
- A Review of Motion Planning Techniques for Automated Vehicles, GonzΓ‘lez D. et al. (2016).
- A Survey of Motion Planning and Control Techniques for Self-driving Urban Vehicles, Paden B. et al. (2016).
- Autonomous driving in urban environments: Boss and the Urban Challenge, Urmson C. et al. (2008).
- The MIT-Cornell collision and why it happened, Fletcher L. et al. (2008).
- Making bertha drive-an autonomous journey on a historic route, Ziegler J. et al. (2014).