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Neural Networks as Artificial Specifications

机译:神经网络作为人造规范

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摘要

In theory, a neural network can be trained to act as an artificial specification for a program by showing it samples of the programs executions. In practice, the training turns out to be very hard. Programs often operate on discrete domains for which patterns are difficult to discern. Earlier experiments reported too much false positives. This paper revisits an experiment by Vanmali et al. by investigating several aspects that were uninvestigated in the original work: the impact of using different learning modes, aggressiveness levels, and abstraction functions. The results are quite promising.
机译:理论上,可以通过显示程序执行的样本来训练神经网络以充当程序的人工规范。在实践中,培训结果非常努力。程序通常在离散域上运行,该域难以辨别。早期的实验报告了太多的误报。本文重新访问vanmali等人的实验。通过调查原始工作中未取消的几个方面:使用不同学习模式,侵略性水平和抽象功能的影响。结果非常有前途。

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