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arxiv: 1103.1003 · v1 · pith:RYWLWCRQnew · submitted 2011-03-05 · 💻 cs.AI

Teraflop-scale Incremental Machine Learning

classification 💻 cs.AI
keywords learningincrementalmachinealgorithmsgrammarupdateadjustingapproach
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We propose a long-term memory design for artificial general intelligence based on Solomonoff's incremental machine learning methods. We use R5RS Scheme and its standard library with a few omissions as the reference machine. We introduce a Levin Search variant based on Stochastic Context Free Grammar together with four synergistic update algorithms that use the same grammar as a guiding probability distribution of programs. The update algorithms include adjusting production probabilities, re-using previous solutions, learning programming idioms and discovery of frequent subprograms. Experiments with two training sequences demonstrate that our approach to incremental learning is effective.

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