Computer Science ›› 2023, Vol. 50 ›› Issue (5): 72-81.doi: 10.11896/jsjkx.220200110
• Explainable AI • Previous Articles Next Articles
ZHANG Wenning1,2,3, ZHOU Qinglei4, JIAO Chongyang1,2, XU Ting1,2,4
CLC Number:
[1]HANH V L,AKIF K,TRAON Y L,et al.Selecting an Efficient OO Integration Testing Strategy:An Experimental Comparison of Actual Strategies[C]//Proceedings of the 15th European Conference on Object-Oriented Programming.Budapest,Hungary,2001:381-401. [2]JIANG S J,ZHANG M,ZHANG Y M,et al.An IntegrationTest Order Strategy to Consider Control Coupling[J].IEEE Transaction on Software Engineering,2021,47(7):1350-1367. [3]CZIBULA G,CZIBULA I G,MARIAN Z.An Effective Ap-proach for Determining the Class Integration Test Order Using Reinforcement Learning[J].Applied Soft Computing,2018,65(C):517-530. [4]ZHANG M,KEUNG J W,CHEN T Y,et al.Validating Class Integration Test Order Generation Systems with Metamorphic Testing[J].Information and Software Technology,2021,132:1-13. [5]KUNG D,GAO J,HSIA P,et al.A Test Strategy for ObjectOriented Programs[C]//Proceedings of the 19th Annual International Computer Software and Applications Conference.Wa-shington:IEEE Computer Society,1995:239-244. [6]KHARI M,SINHA A,VERDU E,et al.Performance Analysis of Six Meta-heuristic Algorithms over Automated Test Suite Generation for Path Coverage based Optimization[J].Soft Computing,2020,24(12):9143-9160. [7]MIRJALILI S,MIRJALILI S M,LEWIS A.Grey Wolf Optimizer[J].Advances in Engineering Software,2014,69(3):46-61. [8]ABUALIGAH L,DIABAT A,MIRJALILI S,et al.The Arith-metic Optimization Algorithm[J].Computer Methods in Applied Mechanics and Engineering,2021,376:1-39. [9]TAI K C,DANIELS F J.Test Order for Interclass Object-Orien-ted Software[C]//Proceedings of the 21stInternational Compu-ter Software and Applications Conference.Washington:IEEE Computer Society,1997:602-607. [10]LE T Y,JERON T,JEZEQUEL M,et al.Efficient ObjectOriented Integration and Regression Test[J].IEEE Transactions on Reliability,2000,49(1):12-25. [11]BRIAND L C,LABICHE Y,WANF Y.An Investigation ofGraph-Based Class Integration Test Order Strategies[J].IEEE Transactions on Software Engineering,2003,29(7):594-607. [12]LU Y S,MAO C Y.Method of Inter Class Test Order Determination for Object Oriented Cluster Level Testing[J].Journal of Mini-Micro ComputerSystems,2005,26(6):995-999. [13]ZHANG M,KEUNG J,XIAO Y,et al.A Heuristic Approach to Break Cycles for the Class Integration Test Order Generation[C]//IEEE 43rd Annual Computer Software and Applications Conference.Washington:IEEE Computer Society,2019:47-52. [14]ZHANG Y M,JIANG S J,ZHANG H C.An Approach forClass Integration Testing based on Dynamic Dependency Relations[J].Chinese Journal of Computers,2011,34(6):1075-1089. [15]JIANG S J,ZHANG Y M,WANG Q T,et al.Design of Class Integration Test Order Based on Coupling Measures[J].International Journal on Information,2012,15(1):331-338. [16]BRIAND L C,FENG J,LABICHE Y.Experiment with Genetic Algorithms and Coupling Measures to Devise Optimal Integration Test Orders[C]//Proceedings of the 14th International Conference on Software Engineering and Knowledge Enginee-ring.New York:ACM,2002:43-50. [17]BORNER L,PAECH B.Integration Test Order Strategies toConsider Test Focus and Simulation Effort[C]//Proceedings of the International Conference on Advances in System Testing and Validation Lifecycle.Washington:IEEE Computer Society,2009:80-85. [18]CZIBULA I G,CZIBULA G,MARIAN Z.Identifying Class Integration Test Order Using an Improved Genetic Algorithm based Approach[C]//Proceedings of International Conference on Software Technologies.Berlin:Springer Verlag,2018:163-187. [19]ZHANG Y M,JIANG S J,CHEN R Y,et al.Class Integration Testing Order Determination Method based on Particle Swarm Optimization Algorithm[J].Chinese Journal of Computers,2018,41(4):931-945. [20]ZHANG Y N,JIANG S J,ZHANG Y M.Approach for Generating Class Integration Test Sequence based on Dream Particle Swarm Optimization Algorithm[J].Computer Science,2019,46(2):159-165. [21]CABRAL R,POZO A,VERGILIO S R.A Pareto Ant Colony Algorithm Applied to the Class Integration and Test Order Problem[C]//Proceedings of the 22nd IFIP International Conference on Testing Software and Systems.Berlin:Springer Verlag,2010:16-29. [22]VERGILIO S R,POZO A,GARCIA J C,et al.Multi-objectiveOptimization Algorithms Applied to the Class Integration and Test Order Problem[J].International Journal on Software Tools for Technology Transfer,2012,14(4):461-475. [23]WANG Y,YU H,ZHU Z L.A Class Integration Test OrderMethod based on the Node Importance of Software[J].Journal of Computer Research and Development,2016,53(3):517-530. [24]ZHANG M,KEUNG J W,XIAO Y,et al.Evaluating the Effects of Similar Class Combination on Class Integration Test Order Generation[J].Information and Software Technology,2021,129:1-16. [25]MARIANI T,GUIZZO G,VERGILIO S R,et al.Grammatical Evolution for the Multi-Objective Integration and Test Order Problem[C]//Proceedings of the Genetic and Evolutionary Computation Conference.New York:ACM,2016:1069-1076. [26]FEI K X,WANG Y W,GONG Y Z.An Integrated Test Sequence Generation Method Based on Software Metrics[J].Journal of Zhengzhou University(Engineering Science),2021,42(4):1-6. [27]HEWETT R,KIJSANAYOTHIN P.Automated Test OrderGeneration for Software Component Integration Testing[C]//Proceedings of IEEE/ACM International Conference on Automated Software Engineering.Washington:IEEE Computer So-ciety,2009:211-220. [28]WANG Z S,LI B X.Using Coupling Measure Technique and Random Iterative Algorithm for Inter-class Integration Test Order Problem[C]//Proceedings of the 34th Annual IEEE Computer Software and Applications Conference.Washington:IEEE Computer Society,2010:329-334. |
[1] | FAN Xing-ze, YU Mei. Coverage Optimization of WSN Based on Improved Grey Wolf Optimizer [J]. Computer Science, 2022, 49(6A): 628-631. |
[2] | LIANG Yao, XIE Chun-li, WANG Wen-jie. Code Similarity Measurement Based on Graph Embedding [J]. Computer Science, 2022, 49(11A): 211000186-6. |
[3] | LIU Yang, ZHENG Wen-ping, ZHANG Chuan, WANG Wen-jian. Local Random Walk Based Label Propagation Algorithm [J]. Computer Science, 2022, 49(10): 103-110. |
[4] | LIU Cheng-han, HE Qing. Adaptive Grouping Fusion Improved Arithmetic Optimization Algorithm and Its Application [J]. Computer Science, 2022, 49(10): 118-125. |
[5] | LIU Dan, ZHAO Sen, YAN Zhi-liang, ZHAO Jing, WANG Hui-qing. miRNA-disease Association Prediction Model Based on Stacked Autoencoder [J]. Computer Science, 2021, 48(10): 114-120. |
[6] | LI Yang, LI Wei-gang, ZHAO Yun-tao, LIU Ao. Grey Wolf Algorithm Based on Levy Flight and Random Walk Strategy [J]. Computer Science, 2020, 47(8): 291-296. |
[7] | ZHANG Hu, ZHOU Jing-jing, GAO Hai-hui, WANG Xin. Network Representation Learning Method on Fusing Node Structure and Content [J]. Computer Science, 2020, 47(12): 119-124. |
[8] | TANG Jia-qi, WU Jing-li, LIAO Yuan-xiu, WANG Jin-yan. Prediction of Protein Functions Based on Bi-weighted Vote [J]. Computer Science, 2019, 46(4): 222-227. |
[9] | ZHAO Qian-qian, LV Min, XU Yin-long. Estimating Graphlets via Two Common Substructures Aware Sampling in Social Networks [J]. Computer Science, 2019, 46(3): 314-320. |
[10] | ZHANG Yue-ning, JIANG Shu-juan, ZHANG Yan-mei. Approach for Generating Class Integration Test Sequence Based on Dream Particle Swarm Optimization Algorithm [J]. Computer Science, 2019, 46(2): 159-165. |
[11] | YIN Xin-hong, ZHAO Shi-yan, CHEN Xiao-yun. Community Detection Algorithm Based on Random Walk of Signal Propagation with Bias [J]. Computer Science, 2019, 46(12): 45-55. |
[12] | LIU Qing-feng, LIU Zhe, SONG Yu-qing, ZHU Yan. Tumor Image Segmentation Method Based on Random Walk with Constraint [J]. Computer Science, 2018, 45(7): 243-247. |
[13] | XIAO Ying-yuan and ZHANG Hong-yu. Friend Recommendation Method Based on Users’ Latent Features in Social Networks [J]. Computer Science, 2018, 45(3): 218-222. |
[14] | QING Yong, LIU Meng-juan, YIN Ying and LI Yang-xi. SMART:A Graph-based Recommendation Algorithm for Fast Moving Consumer Goods in E-commerce Platform [J]. Computer Science, 2017, 44(Z11): 464-469. |
[15] | ZHANG Xin-ming, TU Qiang, KANG Qiang and CHENG Jin-feng. Hybrid Optimization Algorithm Based on Grey Wolf Optimization and Differential Evolution for Function Optimization [J]. Computer Science, 2017, 44(9): 93-98. |
|