注册 | 登录 | FAQ      [?] 
Recent | Unread | Search | Authors | Tags | Export

tdahl's reinforcement_learning [25 articles]

当前文献位于 tdahl's 文献库 标签分类为 reinforcement_learning. You can also see everyone's reinforcement_learning.
  • Hierarchical policy gradient algorithms
    Vol. 18 (2003), pp. 226-233.
    by Mohammad Ghavamzadeh, Sridhar Mahadevan
    posted to hierarchical policy_gradient reinforcement_learning by tdahl on 2008-08-26 09:43:02 as ****
  • Policy gradient methods for reinforcement learning with function approximation
    Vol. 12 (2000), pp. 1057-1063.
    by Richard S Sutton, David Mcallester, Satinder Singh, Yishay Mansour
    posted to policy_gradient reinforcement_learning by tdahl on 2008-08-26 09:40:39 as *****
  • Reinforcement learning with perceptual aliasing: The perceptual distinctions approach
    (1992), pp. 183-188.
    by Lonnie Chrisman
    posted to hidden_state model_based reinforcement_learning by tdahl on 2008-08-11 21:17:18 as **
  • Overcoming incomplete perception with utile distinction memory
    (1993), pp. 190-196.
    by Andrew R Mccallum
    posted to hidden_state model_based reinforcement_learning by tdahl on 2008-08-11 21:13:26 as **
  • Applications of the self-organising map to reinforcement learning
    Neural Networks, Vol. 15, No. 15. (2002), pp. 1107-1124.
    by Andrew J Smith
    posted to reinforcement_learning self_organizing_maps by tdahl on 2008-07-15 22:36:10 as **
  • Real-time hierarchical POMDPs for autonomous robot navigation
    by A Foka, P Trahanias
    posted to hierarchical model_based reinforcement_learning by tdahl on 2008-07-15 22:23:55 as **
  • Learning Probabilistic Models for Decision-Theoretic Navigation of Mobile Robots
    (2000), pp. 671-678.
    by Daniel Nikovski, Illah Nourbakhsh
    posted to hidden_state model_based reinforcement_learning by tdahl on 2008-07-15 22:19:36 as **
  • Learning hierarchical partially observable markov decision processes for robot navigation
    (2001)
    posted to hidden_state hierarchical model_based reinforcement_learning by tdahl on 2008-07-15 22:17:04 as **
  • A Survey of Model-Based and Model-Free Methods for Resolving Perceptual Aliasing
    (2004)
    by Guy Shani
    posted to hidden_state model_based reinforcement_learning survey by tdahl on 2008-07-15 22:14:22 as **
  • How hierarchical control self-organizes in artificial adaptive systems
    Adaptive Behavior, Vol. 13, No. 13. (2005)
    by Rainer W Paine, Jun Tani, Rainer W Paine, Jun Tani
    posted to hierarchical model_based reinforcement_learning by tdahl on 2008-07-15 21:58:23 as *****
  • Model Based Learning for Mobile Robot Navigation from the Dynamical Systems Perspective
    IEEE Trans. Syst. Man and Cybern. B, Vol. 26, No. 3. (1996), pp. 421-436.
    by J Tani
    posted to hierarchical model_based neural_network reinforcement_learning by tdahl on 2008-07-15 21:55:23 as read
  • HQ-Learning
    Adaptive Behavior, Vol. 6, No. 2. (1997), pp. 219-246.
    posted to hierarchical reinforcement_learning by tdahl on 2008-07-15 21:52:51 as read
  • Automatic Discovery of Subgoals in Reinforcement Learning using Diverse Density
    (2001), pp. 361-368.
    by Amy Mcgovern, Andrew G Barto
    edited by Carla E Brodley, Andrea P Danyluk, Carla E Brodley, Andrea P Danyluk
    posted to hierarchical reinforcement_learning by tdahl on 2008-07-15 14:55:51 as read
  • Hidden state and reinforcement learning with instance-based state identification
    posted to hidden_state instance_based reinforcement_learning by tdahl on 2008-07-15 14:51:42 as read
  • Finding Structure in Reinforcement Learning
    Vol. 7 (1995), pp. 385-392.
    by Sebastian Thrun, Anton Schwartz
    edited by G Tesauro, D Touretzky, T Leen
    posted to hierarchical reinforcement_learning by tdahl on 2008-07-15 14:49:00 as *****
  • Discovering hierarchy in reinforcement learning with hexq
    (2002)
    by B Hengst
  • Reinforcement Learning: An Introduction (Adaptive Computation and Machine Learning)
    (01 March 1998)
    by Richard S Sutton, Andrew G Barto
  • Overcoming Incomplete Perception with Utile Distinction Memory
    (1993), pp. 190-196.
    by Andrew Mccallum
    posted to reinforcement_learning by tdahl on 2008-03-08 21:52:40 as **
  • Reinforcement Learning with Hierarchies of Machines
    Vol. 10 (1997)
    by Ronald Parr, Stuart Russell
    edited by Michael I Jordan, Michael J Kearns, Sara A Solla
    posted to hierarchical reinforcement_learning by tdahl on 2008-03-08 21:45:45 as ** along with 1 person Blza
  • Hierarchical Reinforcement Learning with the MAXQ Value Function Decomposition
    Journal of Artificial Intelligence Research, Vol. 13 (2000), pp. 227-303.
    by Thomas G Dietterich
  • Between MDPs and Semi-MDPs: A Framework for Temporal Abstraction in Reinforcement Learning
    Artificial Intelligence, Vol. 112, No. 1-2. (1999), pp. 181-211.
    by Richard S Sutton, Doina Precup, Satinder P Singh
  • Hierarchical reinforcement learning based on subgoal discovery and subpolicy specialization: First experiments with the HASSLE algorithm
    (2003)
  • Reinforcement Learning: A Survey
    Journal of Artificial Intelligence Research, Vol. 4 (1996), pp. 237-285.
    by Leslie P Kaelbling, Michael L Littman, Andrew P Moore
  • Recent advances in hierarchical reinforcement learning
    (2003)
  • Self-segmentation of Sequences: Automatic Formation of Hierarchies of Sequential Behaviors
    No. 609951-2781. (1999)
    by R Sun, C Sessions
    posted to hierarchical reinforcement_learning by tdahl on 2008-03-08 20:03:23 as **
  • ◇温馨提示◇本页的引用地址为: http://www.citeulike.org/user/tdahl/tag/reinforcement_learning

    RIS BibTeX
    CiteULike organises scholarly (or academic) papers or literature and provides bibliographic (which means it makes bibliographies) for universities and higher education establishments. It helps undergraduates and postgraduates. People studying for PhDs or in postdoctoral (postdoc) positions. The service is similar in scope to EndNote or RefWorks or any other reference manager like BibTeX, but it is a social bookmarking service for scientists and humanities researchers.