A Journey Among Java Neutral Program Variants
January 08, 2019 Β· Declared Dead Β· π Genetic Programming and Evolvable Machines
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Authors
Nicolas Harrand, Simon Allier, Marcelino Rodriguez-Cancio, Martin Monperrus, Benoit Baudry
arXiv ID
1901.02533
Category
cs.SE: Software Engineering
Citations
26
Venue
Genetic Programming and Evolvable Machines
Last Checked
4 months ago
Abstract
Neutral program variants are functionally similar to an original program, yet implement slightly different behaviors. Techniques such as approximate computing or genetic improvement share the intuition that potential for enhancements lies in these acceptable behavioral differences (e.g., enhanced performance or reliability). Yet, the automatic synthesis of neutral program variants, through speculative transformations remains a key challenge. This work aims at characterizing plastic code regions in Java programs, i.e., the areas that are prone to the synthesis of neutral program variants. Our empirical study relies on automatic variations of 6 real-world Java programs. First, we transform these programs with three state-of-the-art speculative transformations: add, replace and delete statements. We get a pool of 23445 neutral variants, from which we gather the following novel insights: developers naturally write code that supports fine-grain behavioral changes; statement deletion is a surprisingly effective speculative transformation; high-level design decisions, such as the choice of a data structure, are natural points that can evolve while keeping functionality. Second, we design 3 novel speculative transformations, targeted at specific plastic regions. New experiments reveal that respectively 60\%, 58\% and 73\% of the synthesized variants (175688 in total) are neutral and exhibit execution traces that are different from the original.
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