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Full Restart Speeds Learning

机译:完全重启可加快学习速度

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Because many real-world problems can be represented and solved as constraint satisfaction problems, the development of effective, efficient constraint solvers is important. A solver's success depends greatly upon the heuristics chosen to guide the process; some heuristics perform well on one class of problems, but are less successful on another. ACE is a constraint solver that learns to customize a mixture of heuristics to solve a class of problems. The work described here accelerates that learning by setting higher performance standards. ACE now recognizes when its current learning attempt is not promising, abandons the responsible training problems, and restarts the entire learning process. This paper describes how such full restart (of the learning process rather than of an individual problem) demands careful evaluation if it is to provide effective learning and robust testing performance.
机译:因为许多现实世界中的问题都可以表示为约束满足问题并将其解决,所以开发有效的约束求解器非常重要。求解器的成功在很大程度上取决于为指导过程而选择的启发式方法。一些启发式方法在一类问题上表现良好,而在另一类问题上则不太成功。 ACE是一个约束求解器,它学习自定义混合的启发式方法来解决一类问题。此处描述的工作通过设置更高的性能标准来加速学习。 ACE现在可以识别当前的学习尝试不可行时,放弃负责任的培训问题,并重新开始整个学习过程。本文描述了这种完全重启(学习过程而不是单个问题)如何需要仔细评估,以提供有效的学习和强大的测试性能。

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