[1] KHOSRAVI A, HUSSIN A R C, NILASHI M. Toward software quality enhancement by customer knowledge management in software companies[J]. Telematics and Informatics, 2018, 35(1):18-37. [2] 胡文生,杨剑锋,赵明.类设计质量评估方法的研究[J].计算机科学,2017,44(12):150-155.(HU W S, YANG J F, ZHAO M. Methodology for classes design quality assessment[J]. Computer Science, 2017, 44(12):150-155.) [3] 岳川.基于符号信息的软件质量评价模型[J].广东海洋大学学报,2016,36(1):85-92.(YUE C. A model for evaluating software quality based on symbol information[J]. Journal of Guangdong Ocean University, 2016, 36(1):85-92.) [4] 岳川.基于投影的软件易用性评价方法[J].计算机工程与科学,2017,39(6):1112-1117.(YUE C. A projection-based estimation approach to software usability[J]. Computer Engineering & Science, 2017, 39(6):1112-1117.) [5] 杨阳,汪海涛,姜瑛,等.基于模糊层次分析法的软件质量评价模型的研究[J].计算机与数字工程,2017,45(4):620-623,691.(YANG Y, WANG H T, JIANG Y, et al. Software quality evaluation model based on fuzzy analytic hierarchy process[J]. Computer and Digital Engineering, 2017, 45(4):620-623,691.) [6] 周丽,肖家馨,王国成.一种改进Vague集方法的软件质量评价研究[J].数学的实践与认识,2017,47(22):36-45.(ZHOU L, XIAO J X, WANG G C. Study on software quality evaluation of an improved Vague set method[J]. Mathematics in Practice and Theory, 2017, 47(22):36-45.) [7] 朱映映,曹磊,王旭.无参考屏幕内容图像质量评价[J].软件学报,2018,29(4):973-986.(ZHU Y Y, CAO L, WANG X. No reference screen content image quality assessment[J]. Journal of Software, 2018, 29(4):973-986.) [8] 李宁.基于改进粒子群算法的软件可靠性评估[J].现代电子技术,2017,40(21):102-104,108.(LI N. Software reliability evaluation based on improved particle swarm optimization algorithm[J]. Modern Electronics Technique, 2017, 40(21):102-104, 108.) [9] 郑鹏.基于LM-BP神经网络的软件质量综合评价[J].山东理工大学学报(自然科学版),2016,30(3):74-78.(ZHENG P. The comprehensive evaluation of software quality based on LM-BP neural network[J]. Journal of Shandong University of Technology (Natural Science Edition), 2016, 30(3):74-78.) [10] 刘启林,董威,尹良泽,等.混源软件质量模型与度量方法研究[J].计算机科学,2017,44(4):82-84,95.(LIU Q L, DONG W, YIN L Z, et al. Research on mixed source software quality model and measurement method[J]. Computer Science, 2017, 44(4):82-84, 95.) [11] ÇAGLAYAN B, BENER A B. Effect of developer collaboration activity on software quality in two large scale projects[J]. Journal of Systems and Software, 2016, 118:288-296. [12] JAAFAR F, LOZANO A, GUÉHÉNEUC Y G, et al. Analyzing software evolution and quality by extracting asynchrony change patterns[J]. Journal of Systems and Software, 2017, 131:311-322. [13] ENRÍQUEZ J G, SÁNCHEZ-BEGINES J M, DOMÍNGUEZ-MAYO F J, et al. An approach to characterize and evaluate the quality of product lifecycle management software systems[J]. Computer Standards and Interfaces, 2019, 61:77-88. [14] CARROZZA G, PIETRANTUONO R, RUSSO S. A software quality framework for large-scale mission-critical systems engineering[J]. Information and Software Technology, 2018, 102:100-116. [15] YUE C. A projection-based approach to software quality evaluation from the users' perspectives[J]. International Journal of Machine Learning and Cybernetics, 2019, 10(9):2341-2353. [16] YUE C. A normalized projection-based group decision-making method with heterogeneous decision information and application to software development effort assessment[J]. Applied Intelligence, 2019, 49(10):3587-3605. [17] SIAVVAS M G, CHATZIDIMITRIOU K C, SYMEONIDIS A L. QATCH-an adaptive framework for software product quality assessment[J]. Expert Systems with Applications, 2017, 86:350-366. [18] KALIRAJ M R S, BHARATHI A. Path testing based reliability analysis framework of component based software system[J]. Measurement, 2019, 144:20-32. [19] UTKIN L V, COOLEN F P A. A robust weighted SVR-based software reliability growth model[J]. Reliability Engineering and System Safety, 2018, 176:93-101. [20] SHAN C, MEI S, HU C, et al. Software structure characteristic measurement method based on weighted network[J]. Computer Networks, 2019, 152:178-185. [21] IRSHAD M, PETERSEN K, POULDING S. A systematic literature review of software requirements reuse approaches[J]. Information and Software Technology, 2018, 93:223-245. [22] NGUYEN-DUC A, CRUZES D S, CONRADI R. The impact of global dispersion on coordination, team performance and software quality-a systematic literature review[J]. Information and Software Technology, 2015, 57:277-294. [23] International Organization for Standardization. ISO/IEC JTC 1-information technology[EB/OL].[2019-06-08]. http://www.jtc1.org/directives/toc.htm. [24] CONDORI-FERNANDEZ N, LAGO P. Characterizing the contribution of quality requirements to software sustainability[J]. Journal of Systems and Software, 2018, 137:289-305. [25] GARCÍA-MIRELES G A, MORAGA M Á, GARCÍA F, et al. Interactions between environmental sustainability goals and software product quality:a mapping study[J]. Information and Software Technology, 2018, 95:108-129. [26] WU Y, XU H, XU C, et al. Uncertain multi-attributes decision making method based on interval number with probability distribution weighted operators and stochastic dominance degree[J]. Knowledge-Based Systems, 2016, 113:199-209. [27] YUE C. A geometric approach for ranking interval-valued intuitionistic fuzzy numbers with an application to group decision-making[J]. Computers and Industrial Engineering, 2016, 102:233-245. [28] YUE C. Normalization of attribute values with interval information in group decision-making setting:with an application to software quality evaluation[J]. Journal of Experimental and Theoretical Artificial Intelligence, 2019, 31(3):475-492. [29] YUE C. A novel approach to interval comparison and application to software quality evaluation[J]. Journal of Experimental and Theoretical Artificial Intelligence, 2018, 30(5):583-602. [30] YUE C. A symbol-based fuzzy decision-making approach to evaluate the user satisfaction on services in academic digital libraries[J]. Iranian Journal of Fuzzy Systems, 2019, 16(2):73-86. [31] YUE C, YUE Z. Measuring the satisfaction and loyalty for Chinese smartphone users:a simple symbol-based decision making method[J]. Scientia Iranica, 2019, 26(1):589-604. [32] LU L, YUAN Y. A novel TOPSIS evaluation scheme for cloud service trustworthiness combining objective and subjective aspects[J]. Journal of Systems and Software, 2018, 143:71-86. [33] YUE Z, JIA Y. A direct projection-based group decision-making methodology with crisp values and interval data[J]. Soft Computing, 2017, 21(9):2395-2405. [34] YUE C. Normalized projection approach to group decision-making with hybrid decision information[J]. International Journal of Machine Learning and Cybernetics, 2018, 9(8):1365-1375. [35] YUE C. Entropy-based weights on decision makers in group decision-making setting with hybrid preference representations[J]. Applied Soft Computing, 2017, 60:737-749. [36] YUE C. An interval-valued intuitionistic fuzzy projection-based approach and application to evaluating knowledge transfer effectiveness[J]. Neural Computing and Applications, 2019, 31(11):7685-7706. [37] WEI G, ALSAADI F E, HAYAT T, et al. Projection models for multiple attribute decision making with picture fuzzy information[J]. International Journal of Machine Learning and Cybernetics, 2018, 9(4):713-719. [38] WU H, XU Z, REN P, et al. Hesitant fuzzy linguistic projection model to multi-criteria decision making for hospital decision support systems[J]. Computers and Industrial Engineering, 2018, 115:449-458. [39] JI P, ZHANG H, WANG J. A projection-based TODIM method under multi-valued neutrosophic environments and its application in personnel selection[J]. Neural Computing and Applications, 2018, 29(1):221-234. [40] WANG L, ZHANG H, WANG J, et al. Picture fuzzy normalized projection-based VIKOR method for the risk evaluation of construction project[J]. Applied Soft Computing, 2018, 64:216-226. [41] YUE C. Two normalized projection models and application to group decision-making[J]. Journal of Intelligent and Fuzzy Systems, 2017, 32(6):4389-4402. |