TY - CHAP
T1 - Latent features for algorithm selection
AU - Malitsky, Yuri
AU - O’Sullivan, Barry
N1 - Publisher Copyright:
Copyright © 2014, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rights reserved.
PY - 2014
Y1 - 2014
N2 - The success and power of algorithm selection techniques has been empirically demonstrated on numerous occasions, most noticeably in the competition settings like those for SAT, CSP, MaxSAT, QBF, etc. Yet while there is now a plethora of competing approaches, all of them are dependent on the quality of a set of structural features they use to distinguish amongst the instances. Over the years, each domain has defined and refined its own set of features, yet at their core they are mostly a collection of everything that was considered useful in the past. As an alternative to this shotgun generation of features, this paper instead proposes a more systematic approach. Specifically, the paper shows how latent features gathered from matrix decomposition are enough for a linear model to achieve a level of performance comparable to a perfect Oracle portfolio. This information can, in turn, help guide researchers to the kinds of structural features they should be looking for, or even just identifying when such features are missing.
AB - The success and power of algorithm selection techniques has been empirically demonstrated on numerous occasions, most noticeably in the competition settings like those for SAT, CSP, MaxSAT, QBF, etc. Yet while there is now a plethora of competing approaches, all of them are dependent on the quality of a set of structural features they use to distinguish amongst the instances. Over the years, each domain has defined and refined its own set of features, yet at their core they are mostly a collection of everything that was considered useful in the past. As an alternative to this shotgun generation of features, this paper instead proposes a more systematic approach. Specifically, the paper shows how latent features gathered from matrix decomposition are enough for a linear model to achieve a level of performance comparable to a perfect Oracle portfolio. This information can, in turn, help guide researchers to the kinds of structural features they should be looking for, or even just identifying when such features are missing.
UR - https://www.scopus.com/pages/publications/85012205819
U2 - 10.1609/socs.v5i1.18324
DO - 10.1609/socs.v5i1.18324
M3 - Chapter
AN - SCOPUS:85012205819
T3 - Proceedings of the 7th Annual Symposium on Combinatorial Search, SoCS 2014
SP - 123
EP - 130
BT - Proceedings of the 7th Annual Symposium on Combinatorial Search, SoCS 2014
A2 - Edelkamp, Stefan
A2 - Bartak, Roman
PB - Association for the Advancement of Artificial Intelligence
T2 - 7th Annual Symposium on Combinatorial Search, SoCS 2014
Y2 - 15 August 2014 through 17 August 2014
ER -