Yale Song, Zhen Wen, et al.
IJCAI 2013
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.
Yale Song, Zhen Wen, et al.
IJCAI 2013
Yidi Wu, Thomas Bohnstingl, et al.
ICML 2025
Saeel Sandeep Nachane, Ojas Gramopadhye, et al.
EMNLP 2024
Leonid Karlinsky, Joseph Shtok, et al.
CVPR 2019