An Ensemble Learning and Problem Solving Architecture for Airspace Management

نویسندگان

  • Xiaoqin Zhang
  • Sung Wook Yoon
  • Phillip DiBona
  • Darren Scott Appling
  • Li Ding
  • Janardhan Rao Doppa
  • Derek T. Green
  • Jinhong K. Guo
  • Ugur Kuter
  • Geoffrey Levine
  • Reid MacTavish
  • Daniel McFarlane
  • James Michaelis
  • Hala Mostafa
  • Santiago Ontañón
  • Charles Parker
  • Jainarayan Radhakrishnan
  • Antons Rebguns
  • Bhavesh Shrestha
  • Zhexuan Song
  • Ethan Trewhitt
  • Huzaifa Zafar
  • Chongjie Zhang
  • Daniel D. Corkill
  • Gerald DeJong
  • Thomas G. Dietterich
  • Subbarao Kambhampati
  • Victor R. Lesser
  • Deborah L. McGuinness
  • Ashwin Ram
  • Diana F. Spears
  • Prasad Tadepalli
  • Elizabeth T. Whitaker
  • Weng-Keen Wong
  • James A. Hendler
  • Martin O. Hofmann
  • Kenneth R. Whitebread
چکیده

In this paper we describe the application of a novel learning and problem solving architecture to the domain of airspace management, where multiple requests for the use of airspace need to be reconciled and managed automatically. The key feature of our “Generalized Integrated Learning Architecture” (GILA) is a set of integrated learning and reasoning (ILR) systems coordinated by a central meta-reasoning executive (MRE). Each ILR learns independently from the same training example and contributes to problem-solving in concert with other ILRs as directed by the MRE. Formal evaluations show that our system performs as well as or better than humans after learning from the same training data. Further, GILA outperforms any individual ILR run in isolation, thus demonstrating the power of the ensemble architecture for learning and problem solving.

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تاریخ انتشار 2009