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Obstacles in Fully Automatic Program Repair: A survey

2020-11-05 09:15:02
S. Amirhossein Mousavi, Donya Azizi Babani, Francesco Flammini

Abstract

The current article is an interdisciplinary attempt to decipher automatic program repair processes. The review is done by the manner typical to human science known as diffraction. We attempt to spot a gap in the literature of self-healing and self-repair operations and further investigate the approaches that would enable us to tackle the problems we face. As a conclusion, we suggest a shift in the current approach to automatic program repair operations in order to attain our goals. The emphasis of this review is to achieve full automation. Several obstacles are shortly mentioned in the current essay but the main shortage that is covered is the overfitting obstacle, and this particular problem is investigated in the stream that is related to full automation of the repair process.

Abstract (translated)

URL

https://arxiv.org/abs/2011.02714

PDF

https://arxiv.org/pdf/2011.02714.pdf


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