• DocumentCode
    1411349
  • Title

    A framework for learning in search-based systems

  • Author

    Sarkar, Sudeshna ; Chakrabarti, P.P. ; Ghose, Sujoy

  • Author_Institution
    Dept. of Comput. Sci. & Eng., Indian Inst. of Technol., Kharagpur, India
  • Volume
    10
  • Issue
    4
  • fYear
    1998
  • Firstpage
    563
  • Lastpage
    575
  • Abstract
    We provide an overall framework for learning in search based systems that are used to find optimum solutions to problems. This framework assumes that prior knowledge is available in the form of one or more heuristic functions (or features) of the problem domain. An appropriate clustering strategy is used to partition the state space into a number of classes based on the available features. The number of classes formed will depend on the resource constraints of the system. In the training phase, example problems are run using a standard admissible search algorithm. In this phase, heuristic information corresponding to each class is learned. This new information can be used in the problem solving phase by appropriate search algorithms so that subsequent problem instances can be solved more efficiently. In this framework, we also show that heuristic information of forms other than the conventional single valued underestimate value can be used, since we maintain the heuristic of each class explicitly. We show some novel search algorithms that can work with some such forms. Experimental results have been provided for some domains
  • Keywords
    heuristic programming; learning (artificial intelligence); problem solving; search problems; clustering strategy; heuristic functions; heuristic information; learning framework; novel search algorithms; optimum solutions; prior knowledge; problem domain; problem instances; problem solving phase; resource constraints; search algorithms; search based systems; single valued underestimate value; standard admissible search algorithm; state space; training phase; Clustering algorithms; Cost function; Helium; Intelligent systems; Learning systems; Partitioning algorithms; Problem-solving; Standards development; State estimation; State-space methods;
  • fLanguage
    English
  • Journal_Title
    Knowledge and Data Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/69.706057
  • Filename
    706057