The present paper makes an incursion into the new and complex models of communication that can be found in literature, trying to identify their graphic decoding and their applicability in an industrial enterprise. The authors identified real examples for each model under investigation, so the purpose of the paper is to emphasize the importance of communication and the applicability of the new methods of communication in engineering.
If the inline PDF is not rendering correctly, you can download the PDF file here.
 Al-Fedaghi S., Al-Babtain B. (2012), Modeling the Forensics Process, International Journal of Security and Its Applications,vol. 6, no. 4, pp. 97-108.
 Barbillon B., Donnet S., Lazega E., Avner Bar-Hen A. (2017), Stochastic block models for multiplex networks: an application to a multilevel network of researchers, Journal of Royal Statistical Society, vol. 80, pp. 295-314.
 Bylieva D., Lobatyuk V., Safonova A. (2019), Communication Model, Categories of Online Communication Regulation and Norms of Behavior, Humanities & Social Sciences Reviews, vol .7, pp. 332-340.
 Hanneke S., Mellon C., Xing E. P. (2010), Discrete temporal models of social networks, Electronic Journal of Statistics, vol. 4, pp. 585-605.
 Hurme T.-R., Veermans K., Palonen T., Järvelä S. (2008), Exploring changes in network structures during online discussions, ICLS’08 Proceedings of the 8th international conference on International conference for the learning sciences, vol. 1, pp. 382-389.
 Lars Elleström L. (2018), A medium-centered model of communication, Semiotica, vol. 224, pp. 269-293.
 Krichene1 H., Chakraborty A., Fujiwara Y., Inoue H., Terai M. (2019), Tie-formation process within the communities of the Japanese production network: application of an exponential random graph model, Applied Network Science, vol. 4:5, pp. 1-22.
 Krivitsky P. N., Handcock M. S. (2014), A Separable Model for Dynamic Networks, J. R. Stat. Soc. Series, vol. 76, pp. 29-46.
 Matias C., Rebafka T., Villers F. (2018), A semiparametric extension of the stochastic block model for longitudinal networks, Biometrika, vol. 105, issue 3, pp. 665-680.
 Tranmer M., Steel D., Browne W. J. (2014), Multiple-membership multiple-classification models for social network and group dependences, J. R. Statist. Soc., vol. 177, part 2, pp. 439–455.
 Zandberg T., Huisman M. (2019), Missing behavior data in longitudinal network studies: the impact of treatment methods on estimated effect parameters in stochastic actor oriented models, Social Network Analysis and Mining, vol. 9, pp. 1-20.
 Welles B. F., Vashevko A., Bennett N., Contractor N. (2014), Dynamic Models of ommunication in an Online Friendship Network, Journal of Communication Methods and Measures, vol. 8, pp. 223-243.