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The Ethereal
Abstract Learning Frameworks for Synthesis
July 20, 2015 ยท The Ethereal ยท ๐ International Conference on Tools and Algorithms for Construction and Analysis of Systems
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Authors
Christof Lรถding, P. Madhusudan, Daniel Neider
arXiv ID
1507.05612
Category
cs.LO: Logic in CS
Cross-listed
cs.PL
Citations
31
Venue
International Conference on Tools and Algorithms for Construction and Analysis of Systems
Last Checked
2 months ago
Abstract
We develop abstract learning frameworks (ALFs) for synthesis that embody the principles of CEGIS (counter-example based inductive synthesis) strategies that have become widely applicable in recent years. Our framework defines a general abstract framework of iterative learning, based on a hypothesis space that captures the synthesized objects, a sample space that forms the space on which induction is performed, and a concept space that abstractly defines the semantics of the learning process. We show that a variety of synthesis algorithms in current literature can be embedded in this general framework. While studying these embeddings, we also generalize some of the synthesis problems these instances are of, resulting in new ways of looking at synthesis problems using learning. We also investigate convergence issues for the general framework, and exhibit three recipes for convergence in finite time. The first two recipes generalize current techniques for convergence used by existing synthesis engines. The third technique is a more involved technique of which we know of no existing instantiation, and we instantiate it to concrete synthesis problems.
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