DocumentCode :
259580
Title :
A Knowledge Growth and Consolidation Framework for Lifelong Machine Learning Systems
Author :
Martinez Plumed, Fernando ; Ferri, Cesar ; Hernandez Orallo, Jose ; Ramirez Quintana, Maria Jose
Author_Institution :
DSIC, Univ. Politec. de Valencia, València, Spain
fYear :
2014
fDate :
3-6 Dec. 2014
Firstpage :
111
Lastpage :
116
Abstract :
A more effective vision of machine learning systems entails tools that are able to improve task after task and to reuse the patterns and knowledge that are acquired previously for future tasks. This incremental, long-life view of machine learning goes beyond most of state-of-the-art machine learning techniques that learn throw-away models. In this paper we present a long-life knowledge acquisition, evaluation and consolidation framework that is designed to work with any rule-based machine learning or inductive inference engine and integrate it into a long-life learner. In order to do that we work over the graph of working memory rules and introduce several topological metrics over it from which we derive an oblivion criterion to drop useless rules from working memory and a consolidation process to promote the rules to the knowledge base. We evaluate the framework on a series of tasks in a chess rule learning domain.
Keywords :
graph theory; inference mechanisms; knowledge acquisition; knowledge based systems; learning (artificial intelligence); chess rule learning domain; consolidation process; inductive inference engine; knowledge base; long-life knowledge acquisition; long-life machine learning systems; machine learning techniques; oblivion criterion; rule-based machine learning; topological metrics; working memory rules; Engines; Knowledge based systems; Law; Learning systems; Measurement; Optimized production technology; Lifelong machine learning; declarative learning; knowledge topology and acquisition; oblivion criterion;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Machine Learning and Applications (ICMLA), 2014 13th International Conference on
Conference_Location :
Detroit, MI
Type :
conf
DOI :
10.1109/ICMLA.2014.23
Filename :
7033100
Link To Document :
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