Chen, C., & Morris, S. (2003, October). Visualizing evolving networks: Minimum spanning trees versus pathfinder networks. IEEE symposium on information visualization 2003 (IEEE Cat. No. 03TH8714) (pp. 67-74). IEEE. DOI: 10.1109/INFVIS.2003.1249010
Chen, L., Dui, H., & Zhang, C. (2020). A resilience measure for supply chain systems considering the interruption with the cyber-physical systems. Reliability engineering & system safety, 199, 106869. https://doi.org/10.1016/j.ress.2020.106869
Cook, H. V., & Jensen, L. J. (2019). A guide to dictionary-based text mining. In R. S. Larson & T. I. Oprea (Eds.), Bioinformatics and drug discovery (pp. 73-89). New York: Springer. https://doi.org/10.1007/978-1-4939-9089-4_5
Falasca, M., Zobel, C. W., & Cook, D. (2008, May). A decision support framework to assess supply chain resilience. Proceedings of the 5th international ISCRAM conference (pp. 596-605). Washington, DC, USA.
Häring, I. (2015). Risk analysis and management: engineering resilience (pp. 9-26). Singapore: Springer.
Hohenstein, N. O., Feisel, E., Hartmann, E., & Giunipero, L. (2015). Research on the phenomenon of supply chain resilience. International journal of physical distribution & logistics management, 45(1/2), 90-117.
Hosseini, S., Ivanov, D., & Dolgui, A. (2019). Review of quantitative methods for supply chain resilience analysis
. Transportation research part E: logistics and transportation review, 125, 285-307.
https://doi.org/10.1016/j.tre.2019.03.001
Huang, L., Kelly, S., Lv, K., & Giurco, D. (2019). A systematic review of empirical methods for modelling sectoral carbon emissions in China
. Journal of cleaner production, 215, 1382-1401.
https://doi.org/10.1016/j.jclepro.2019.01.058
Jo, T. (2018). Text mining: concepts, implementation, and big data challenge (Vol. 45). Springer.
Justicia De La Torre, C., Sánchez, D., Blanco, I., & Martín-Bautista, M. J. (2018). Text mining: techniques, applications, and challenges
. International journal of uncertainty, fuzziness and knowledge-based systems, 26(04), 553-582.
https://doi.org/10.1142/S0218488518500265
Kawale, J., & Boley, D. (2013, May). Constrained spectral clustering using l1 regularization.
Proceedings of the 2013 SIAM International Conference on Data Mining (pp. 103-111)
. Society for Industrial and Applied Mathematics.
https://doi.org/10.1137/1.9781611972832.12
Kobayashi, V. B., Mol, S. T., Berkers, H. A., Kismihók, G., & Den Hartog, D. N. (2018). Text mining in organizational research. Organizational research methods, 21(3), 733-765.
Li, X., Wu, Q., Holsapple, C. W., & Goldsby, T. (2017). An empirical examination of firm financial performance along dimensions of supply chain resilience
. Management research review, 40(3), 254-269.
https://doi.org/10.1108/MRR-02-2016-0030
Li, Y., & Zobel, C. W. (2020). Exploring supply chain network resilience in the presence of the ripple effect.
International journal of production economics, 228, 107693.
https://doi.org/10.1016/j.ijpe.2020.107693
Mahmudi, A., Mojibian, F., & Noory Sabet, A. (2019). A mathematical model for supplier selection in supply chain considering inventory control and pricing problems. Journal of decisions and operations research, 4(1), 88-99. (
In Persian). DOI:
https://doi:10.22105/dmor.2019.89845
Maulidina, A. D., & Putra, F. E. (2018). Selection of tugboat gearbox supplier using the analytical hierarchy process method. Journal of applied research on industrial engineering, 5(3), 253-262.
Melnyk, S. A., Zobel, C. W., Macdonald, J. R., & Griffis, S. E. (2014). Making sense of transient responses in simulation studies. International journal of production research, 52(3), 617-632.
Mur, A., Dormido, R., Duro, N., Dormido-Canto, S., & Vega, J. (2016). Determination of the optimal number of clusters using a spectral clustering optimization
. Expert systems with applications, 65, 304-314.
https://doi.org/10.1016/j.eswa.2016.08.059
Najafi, S. E., Behnood, R., & Omidi Rakavandi, M. (2016). Evaluation of logistics service supplier with integrated approach of group analytical hierarchy process and borda group decision making.
Journal of decisions and operations research,
1(1), 15-31. (
In Persian). DOI:
https://doi:10.22105/dmor.2016.40312
Ng, A. Y., Jordan, M. I., & Weiss, Y. (2002). On spectral clustering: Analysis and an algorithm. Advances in neural information processing systems, 2, 849-856.
Oliver, R. K., & Webber, M. D. (1982). Supply-chain management: logistics catches up with strategy. Outlook, 5(1), 42-47.
Pettit, T. J., Croxton, K. L., & Fiksel, J. (2019). The evolution of resilience in supply chain management: a retrospective on ensuring supply chain resilience. Journal of business logistics, 40(1), 56-65.
Pytel, A., & Kiusalaas, J. (2003). Mechanics of materials. Stamford: Cengage Learning.
Ribeiro, J. P., & Barbosa-Povoa, A. (2018). Supply chain resilience: definitions and quantitative modelling approaches–a literature review. Computers & industrial engineering, 115, 109-122
Scheibe, K. P., & Blackhurst, J. (2018). Supply chain disruption propagation: a systemic risk and normal accident theory perspective. International journal of production research, 56(1-2), 43-59.
Shi, J., & Malik, J. (2000). Normalized cuts and image segmentation. IEEE transactions on pattern analysis and machine intelligence, 22(8), 888-905.
Spiegler, V. L., Naim, M. M., & Wikner, J. (2012). A control engineering approach to the assessment of supply chain resilience. International journal of production research, 50(21), 6162-6187.
Taghizadeh, H., & Hafezi, E. (2012). The investigation of supply chain's reliability measure: a case study. Journal of industrial engineering international, 8(22), 1-10. https://doi.org/10.1186/2251-712X-8-22
Taşkın, Z., & Al, U. (2014). Standardization problem of author affiliations in citation indexes. Scientometrics, 98(1), 347-368.
Tukamuhabwa, B. R., Stevenson, M., Busby, J., & Zorzini, M. (2015). Supply chain resilience: definition, review and theoretical foundations for further study. International journal of production research, 53(18), 5592-5623.
Von Luxburg, U. (2007). A tutorial on spectral clustering. Statistics and computing, 17(4), 395-416.
Wang, X., Qian, B., & Davidson, I. (2014). On constrained spectral clustering and its applications. Data Mining and knowledge discovery, 28(1), 1-30. https://doi.org/10.1007/s10618-012-0291-9
Ye, C. (2018, July). Bibliometrical analysis of international big data research: Based on citespace and vosviewer. 14th international conference on natural computation, fuzzy systems and knowledge discovery (ICNC-FSKD) (pp. 927-932). IEEE.
Yu, W., Jacobs, M. A., Chavez, R., & Yang, J. (2019). Dynamism, disruption orientation, and resilience in the supply chain and the impacts on financial performance: a dynamic capabilities perspective.
International journal of production economics, 218, 352-362.
https://doi.org/10.1016/j.ijpe.2019.07.013
Zelnik-Manor, L., & Perona, P. (2005). Self-tuning spectral clustering. Advances in Neural information processing systems (pp. 1601-1608). MIT Press, Cambridge, MA. https://resolver.caltech.edu/CaltechAUTHORS:20160314-152424746
Zhang, Q., Rong, G., Meng, Q., Yu, M., Xie, Q., & Fang, J. (2020). Outlining the keyword co-occurrence trends in Shuanghuanglian injection research: A bibliometric study using CiteSpace III.
Journal of traditional Chinese medical sciences, 7(2), 189-198.
https://doi.org/10.1016/j.jtcms.2020.05.006