Information Technology Reference
In-Depth Information
50. Harman, M., McMinn, P.: A theoretical and empirical study of search based
testing: Local, global and hybrid search. IEEE Transactions on Software Engi-
neering 36(2), 226-247 (2010)
51. Harman, M., Swift, S., Mahdavi, K.: An empirical study of the robustness of two
module clustering fitness functions. In: Genetic and Evolutionary Computation
Conference (GECCO 2005), Washington DC, USA, pp. 1029-1036. Association
for Computer Machinery (2005)
52. Harman, M., Tratt, L.: Pareto optimal search-based refactoring at the design
level. In: GECCO 2007: Proceedings of the 9th Annual Conference on Genetic
and Evolutionary Computation, pp. 1106-1113. ACM Press, London (2007)
53. Jean Harrold, M., Gupta, R., Lou Soffa, M.: A methodology for controlling the size
of a test suite. ACM Transactions on Software Engineering and Methodology 2(3),
270-285 (1993)
54. Holland, J.H.: Adaptation in Natural and Artificial Systems. University of Michi-
gan Press, Ann Arbor (1975)
55. Ince, D.C., Hekmatpour, S.: Empirical evaluation of random testing. The Com-
puter Journal 29(4) (August 1986)
56. Kirkpatrick, S., Gellat, C.D., Vecchi, M.P.: Optimization by simulated annealing.
Science 220(4598), 671-680 (1983)
57. Kirsopp, C., Shepperd, M., Hart, J.: Search heuristics, case-based reasoning and
software project effort prediction. In: GECCO 2002: Proceedings of the Genetic
and Evolutionary Computation Conference, July 9-13, pp. 1367-1374. Morgan
Kaufmann Publishers, San Francisco (2002)
58. Kirsopp, C., Shepperd, M.J., Hart, J.: Search heuristics, case-based reasoning and
software project effort prediction. In: Proceedings of the Genetic and Evolution-
ary Computation Conference, GECCO 2002, pp. 1367-1374. Morgan Kaufmann
Publishers Inc., San Francisco (2002)
59. Korel, B.: Automated software test data generation. IEEE Transactions on Soft-
ware Engineering 16(8), 870-879 (1990)
60. Lakhotia, K., Harman, M., McMinn, P.: Handling dynamic data structures in
search based testing. In: Proceedings of the Genetic and Evolutionary Computa-
tion Conference (GECCO 2008), pp. 1759-1766. ACM Press, Atlanta (2008)
61. Lehre, P.K., Yao, X.: Runtime analysis of search heuristics on software engineering
problems. Frontiers of Computer Science in China 3(1), 64-72 (2009)
62. Mahdavi, K., Harman, M., Mark Hierons, R.: A multiple hill climbing approach
to software module clustering. In: IEEE International Conference on Software
Maintenance, pp. 315-324. IEEE Computer Society Press, Los Alamitos (2003)
63. Maia, C.L.B., do Carmo, R.A.F., de Freitas, F.G., Lima de Campos, G.A., de
Souza, J.T.: A multi-objective approach for the regression test case selection prob-
lem. In: Proceedings of Anais do XLI Simposio Brasileiro de Pesquisa Operacional
(SBPO 2009), pp. 1824-1835 (2009)
64. Mancoridis, S., Mitchell, B.S., Rorres, C., Chen, Y.-F., Gansner, E.R.: Using
automatic clustering to produce high-level system organizations of source code.
In: International Workshop on Program Comprehension (IWPC 1998), pp. 45-53.
IEEE Computer Society Press, Los Alamitos (1998)
65. McMinn, P.: Search-based software test data generation: A survey. Software Test-
ing, Verification and Reliability 14(2), 105-156 (2004)
66. McMinn, P.: Search-based testing: Past, present and future. In: Proceedings of
the 3rd International Workshop on Search-Based Software Testing (SBST 2011).
IEEE, Berlin (to appear, 2011)
Search WWH ::




Custom Search