ARJA: Automated Repair of Java Programs via Multi-Objective Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @Misc{2017arXiv171207804Y,
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author = "Yuan Yuan and Wolfgang Banzhaf",
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title = "{ARJA}: Automated Repair of Java Programs via
Multi-Objective Genetic Programming",
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howpublished = "arXiv:1712.07804",
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year = "2017",
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month = dec,
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keywords = "genetic algorithms, genetic programming, genetic
improvement, Program repair, patch generation,
multi-objective optimization, SBSE, Software
Engineering",
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URL = "https://arxiv.org/pdf/1712.07804",
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URL = "http://adsabs.harvard.edu/abs/2017arXiv171207804Y",
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size = "30 pages",
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abstract = "Recent empirical studies show that the performance of
GenProg is not satisfactory, particularly for Java. In
this paper, we propose ARJA, a new GP based repair
approach for automated repair of Java programs. To be
specific, we present a novel lower-granularity patch
representation that properly decouples the search
subspaces of likely-buggy locations, operation types
and potential fix ingredients, enabling GP to explore
the search space more effectively. Based on this new
representation, we formulate automated program repair
as a multi-objective search problem and use NSGA-II to
look for simpler repairs. To reduce the computational
effort and search space, we introduce a test filtering
procedure that can speed up the fitness evaluation of
GP and three types of rules that can be applied to
avoid unnecessary manipulations of the code. Moreover,
we also propose a type matching strategy that can
create new potential fix ingredients by exploiting the
syntactic patterns of the existing statements. We
conduct a large-scale empirical evaluation of ARJA
along with its variants on both seeded bugs and
real-world bugs in comparison with several
state-of-the-art repair approaches. Our results verify
the effectiveness and efficiency of the search
mechanisms employed in ARJA and also show its
superiority over the other approaches. In particular,
compared to jGenProg (an implementation of GenProg for
Java), an ARJA version fully following the redundancy
assumption can generate a test-suite adequate patch for
more than twice the number of bugs (from 27 to 59), and
a correct patch for nearly four times of the number
(from 5 to 18), on 224 real-world bugs considered in
Defects4J. Furthermore, ARJA is able to correctly fix
several real multi-location bugs that are hard to be
repaired by most of the existing repair approaches.",
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notes = "https://github.com/yyxhdy/arja",
- }
Genetic Programming entries for
Yuan Yuan
Wolfgang Banzhaf
Citations