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Fast model-based fault localisation with test suites

Fast model-based fault localisation with test suites
Fast model-based fault localisation with test suites
Fault localisation, i.e. the identification of program locations that cause errors, takes significant effort and cost. We describe a fast model-based fault localisation algorithm which, given a test suite, uses symbolic execution methods to fully automatically identify a small subset of program locations where genuine program repairs exist. Our algorithm iterates over failing test cases and collects locations where an assignment change can repair exhibited faulty behaviour. Our main contribution is an improved search through the test suite, reducing the effort for the symbolic execution of the models and leading to speed-ups of more than two orders of magnitude over the previously published implementation by Griesmayer et al.

We implemented our algorithm for C programs, using the KLEE symbolic execution engine, and demonstrate its effectiveness on the Siemens TCAS variants. Its performance is in line with recent alternative model-based fault localisation techniques, but narrows the location set further without rejecting any genuine repair locations where faults can be fixed by changing a single assignment
automated debugging, fault localisation, symbolic execution
0302-9743
38-57
Springer
Birch, Geoff
4e118f9f-4a3a-4f28-893d-57423b360c16
Fischer, Bernd
0c9575e6-d099-47f1-b3a2-2dbc93c53d18
Poppleton, Michael
4c60e63f-188c-4636-98b9-de8a42789b1b
Birch, Geoff
4e118f9f-4a3a-4f28-893d-57423b360c16
Fischer, Bernd
0c9575e6-d099-47f1-b3a2-2dbc93c53d18
Poppleton, Michael
4c60e63f-188c-4636-98b9-de8a42789b1b

Birch, Geoff, Fischer, Bernd and Poppleton, Michael (2015) Fast model-based fault localisation with test suites. In Tests and Proofs: 9th International Conference, TAP 2015, Held as Part of STAF 2015, L’Aquila, Italy, July 22-24, 2015. Proceedings. vol. 9154, Springer. pp. 38-57 . (doi:10.1007/978-3-319-21215-9_3).

Record type: Conference or Workshop Item (Paper)

Abstract

Fault localisation, i.e. the identification of program locations that cause errors, takes significant effort and cost. We describe a fast model-based fault localisation algorithm which, given a test suite, uses symbolic execution methods to fully automatically identify a small subset of program locations where genuine program repairs exist. Our algorithm iterates over failing test cases and collects locations where an assignment change can repair exhibited faulty behaviour. Our main contribution is an improved search through the test suite, reducing the effort for the symbolic execution of the models and leading to speed-ups of more than two orders of magnitude over the previously published implementation by Griesmayer et al.

We implemented our algorithm for C programs, using the KLEE symbolic execution engine, and demonstrate its effectiveness on the Siemens TCAS variants. Its performance is in line with recent alternative model-based fault localisation techniques, but narrows the location set further without rejecting any genuine repair locations where faults can be fixed by changing a single assignment

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More information

e-pub ahead of print date: 17 July 2015
Published date: 2015
Venue - Dates: TAP 2015: 9th International Conference, , L’Aquila, Italy, 2015-07-22 - 2015-07-24
Keywords: automated debugging, fault localisation, symbolic execution
Organisations: Electronic & Software Systems

Identifiers

Local EPrints ID: 381946
URI: http://eprints.soton.ac.uk/id/eprint/381946
ISSN: 0302-9743
PURE UUID: 0a2368c5-9bec-427d-8a12-c6302ffdedfa

Catalogue record

Date deposited: 19 Oct 2015 10:23
Last modified: 15 Mar 2024 14:45

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Contributors

Author: Geoff Birch
Author: Bernd Fischer
Author: Michael Poppleton

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