Robert Farrell, Rajarshi Das, et al.
AAAI-SS 2010
One of the most common mechanisms used for speeding up problem solvers is macro-learning. Macros are sequences of basic operators acquired during problem solving. Macros are used by the problem solver as if they were basic operators. The major problem that macro-learning presents is the vast number of macros that are available for acquisition. Macros increase the branching factor of the search space and can severely degrade problem-solving efficiency. To make macro learning useful, a program must be selective in acquiring and utilizing macros. This paper describes a general method for selective acquisition of macros. Solvable training problems are generated in increasing order of difficulty. The only macros acquired are those that take the problem solver out of a local minimum to a better state. The utility of the method is demonstrated in several domains, including the domain of N × N sliding-tile puzzles. After learning on small puzzles, the system is able to efficiently solve puzzles of any size.
Robert Farrell, Rajarshi Das, et al.
AAAI-SS 2010
Ryan Johnson, Ippokratis Pandis
CIDR 2013
Jihun Yun, Peng Zheng, et al.
ICML 2019
John R. Kender, Rick Kjeldsen
IEEE Transactions on Pattern Analysis and Machine Intelligence