A multi-objective particle swarm optimization for the submission decision process
Tóm tắt
The recently introduced Submission Decision Process problem entails deciding, out of N-1! possible journal submission schedules, which one will, if followed, give an author the maximum expected number of citations while minimizing the expected number of submissions required on one hand, or the expected time spent in review on the other hand. The unnecessarily high computational burden in the existing algorithm used for addressing this problem was observed, and propose a new discrete Multi-Objective Particle Swarm Optimization algorithm which cuts down computational time by a huge factor is proposed. An improvement in the computation of the various objectives is also suggested which further reduces computational burden, and the problem is extended beyond the usual bi-objective optimization to a 3-objective optimization which is solved with the proposed algorithm.
Tài liệu tham khảo
Arasomwan MA, Adewumi AO (2013) An adaptive velocity particle swarm optimization for high-dimensional function optimization. In: Proceedings of the IEEE congress on evolutionary computation (CEC ‘13), Mexico City, Mexico, pp 2352–2359
Arasomwan MA, Adewumi AO (2014) Improved particle swarm optimization with a collective local unimodal search for continuous optimization problems. Sci World J 2014:1–23
Arasomwan MA, Adewumi AO (2016) On the performance of particle swarm optimization with(out) some control parameters for global optimization. Int J Bio-Inspired Comput 8(1):14–32
Archambault É, Larivière V (2009) History of the journal impact factor: contingencies and consequences. Scientometrics 79:635–649
Banks A, Vincent J, Anyakoha C (2007) A review of particle swarm optimization. Part I: background and development. Nat Comput 6:467–484
Bollen J, Van de Sompel H, Hagberg A, Chute R (2009) A principal component analysis of 39 scientific impact measures. PLoS One 4:e6022
Bornmann L, Marx W, Gasparyan AY, Kitas GD (2012) Diversity, value and limitations of the journal impact factor and alternative metrics. Rheumatol Int 32:1861–1867
Clerc M (2012) Standard particle swarm optimisation from 2006 to 2011. Technical report, particle swarm central, HAL
Dorigo M, Gambardella LM (1997) Ant colony system: a cooperative learning approach to the traveling salesman problem. IEEE Trans Evol Comput 1(1):53–66
Editors PM (2006) The impact factor game. PLoS Med 3:e291
Garfield E (1955) Citation indexes for science: a new dimension in documentation through association of ideas. Science 122(3159):108–111
Fazel S, Lamsma J (2015) Beyond the impact factor? Evidence Based Mental Health. doi:10.1136/eb-2015-102087
Fister I Jr, Yang X-S, Fister I, Brest J, Fister D (2013) A brief review of nature-inspired algorithms for optimization. Elektrotehniški vestnik 80(3):116–122
Garfield E (1999) Journal impact factor: a brief review. Can Med Assoc J 161(8):979–980
Glänzel W, Moed HF (2002) J Impact Meas Bibliometr Res. Scientometrics 53(2):171–193
Golosovsky M, Solomon S (2014) Uncovering the dynamics of citations of scientific papers. Comput Res Repos (CoRR). http://arixiv.org/abs/1410.0343arXiv:1410.0343
Habibzadeh F (2008) Opinion: journal impact factor: uses and misuses. Arch Iran Med 11(4):453–454
Hecht F, Hecht BK, Sandberg AA (1998) The journal “impact factor”: a misnamed, misleading, misused measure. Cancer Genet Cytogenet 104:77–81
Hirsch JE (2005) An index to quantify an individual’s scientific research output. Proc Natl Acad Sci USA 102:16569–16572
Hodge DR, Lacasse JR (2010) Evaluating journal quality: is the H-index a better measure than impact factors? Res Soc Work Pract 21(2):222–230
Kennedy J, Eberhart R (1995) Particle swarm optimization. Proc IEEE Int Conf Neural Netw 4:1942–1948
Leff D (2005) Making an impact: the rise of the impact factor as a measure of journal quality. J Am Diet Assoc 105(1):29–30
Lopez J, Susarla SM, Swanson EW, Calotta N, Lifchez SD (2015) The association of the H-index and academic rank among full-time academic hand surgeons affiliated with fellowship programs. J Hand Surg 40(7):1434–1441
Marini F, Walczak B (2015) Particle swarm optimization (PSO). A tutorial. Chemom Intell Lab Syst 149:153–165
Mostaghim S, Teich J (2003) The role of ε-dominance in multi objective particle swarm optimization methods. In: Proceedings of the 2003 congress on evolutionary computation (CEC’03), pp 1764–1771
Mostaghim S, Teich J (2003) Strategies for finding good local guides in multi-objective particle swarm optimization. In: Proceedings of the 2003 IEEE symposium on swarm intelligence (SIS’03), pp 26–33
Olusanya MO, Arasomwan MA, Adewumi AO (2015) Particle swarm optimization algorithm for optimizing assignment of blood in blood banking system. Comput Math Methods Med 2015:1–12
Pan RK, Fortunato S (2014) Author impact factor: tracking the dynamics of individual scientific impact. Sci Rep 4:4880
Parsopoulos KE (2010) Particle swarm optimization and intelligence: advances and applications: advances and applications, IGI Global
Revesz PZ (2014) A method for predicting citations to the scientific publications of individual researchers. In: Proceedings of the 18th international database engineering & applications symposium, pp 9–18
Reyes-Sierra M, Coello CC (2006) Multi-objective particle swarm optimizers: a survey of the state-of-the-art. Int J Comput Intell Res 2(3):287–308
Salinas S, Munch SB (2015) Where should I send it? Optimizing the submission decision process. PLoS One 10(1):1–11
Shah N, Song Y (2015) S-index: towards better metrics for quantifying research impact. arXiv:1507.03650
Sharma K, Chhamunya V, Gupta PC, Sharma H, Bansal JC (2015) Fitness based particle swarm optimization. Int J Syst Assur Eng Manag 6(3):319–329
Smith R (2006) Commentary: the power of the unrelenting impact factor—is it a force for good or harm? Int J Epidemiol 35:1129–1130
Stegehuis C, Litvak N, Waltman L (2015) Predicting the long-term citation impact of recent publications. J Informetr 9(3):642–657
Stern DI (2014) High-ranked social science journal articles can be identified from early citation information. PLoS One 9(11):e112520. doi:10.1371/journal.pone.0112520
Teodorović D, Dell’Orco M (2005) Bee colony optimization—a cooperative learning approach to complex transportation problems. In: Advanced OR and AI methods in transportation: proceedings of 16th Mini–EURO conference and 10th meeting of EWGT (13–16 September). Publishing House of the Polish Operational and System Research, Poznan, pp 51–60
Wilhite AW, Fong EA (2012) Coercive citation in academic publishing. Science 335(6068):542–543
Yang X-S (2009) Firefly algorithmsmultimodal optimization. Stoch Algorithms Found Appl Lecture Note Comput Sci Springer 5792:169–178
Ying QF, Venkatramanan S, Chiu DM (2015) Modeling and analysis of scholar mobility on scientific landscape. In: Proceedings of the 24th international conference on world wide web companion, pp 609–614