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Erschienen in: Global Journal of Flexible Systems Management 1/2024

07.02.2024 | ORIGINAL RESEARCH

Predicting Consumer Behavior Based on Big Data of User-Generated Online Content in Retail Marketing

verfasst von: Gleb Karpushkin

Erschienen in: Global Journal of Flexible Systems Management | Ausgabe 1/2024

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Abstract

The purpose of this study is to create, using big data from user content in retail marketing, a prediction approach to predicting consumer behavior. Based on an approach with two key components, prediction is achievable. The first step is accurate big data analytics of user-generated material, highlighting the essential information and monitoring changes in user behavior (posting and purchasing) as a result of shifting value proposition variables. Second, it involves the inclusion of specialists and seasoned marketers in sociological surveys that use large samples of respondents and the probabilistic method. The value proposition structure was broken down into ten components that influence the rhetoric of user content using the stratification approach. The competitive advantages or business objectives of stores, in turn, made clear the essential categories of user content. The study focuses on Russia’s most widely used digital trading platforms. The study developed an approach to the expert prediction of consumer behavior following changes in content quality and highlighted efficient digital tools for doing so using the sociological technique. The methodology for expert forecasting of consumer behavior amid changes in the quality of user content was developed using empirical, probabilistic, and sociological methods. The competitive advantage or goal of an online store was shown to be the most important element in altering consumer behavior. The proposed expert prediction methodology based on the likelihood matrix of a decline in customer conversion rates due to user content degradation is the study’s scientific contribution.

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Literatur
Zurück zum Zitat Ariannezhad, M., Jullien, S., Nauts, P., Fang, M., Schelter, S., & de Rijke M. (2021). Understanding multi-channel customer behavior in retail. In Proceedings of the 30th ACM international conference on information & knowledge management (pp. 2867–2871). Association for Computing Machinery. https://doi.org/10.1145/3459637.3482208 Ariannezhad, M., Jullien, S., Nauts, P., Fang, M., Schelter, S., & de Rijke M. (2021). Understanding multi-channel customer behavior in retail. In Proceedings of the 30th ACM international conference on information & knowledge management (pp. 2867–2871). Association for Computing Machinery. https://​doi.​org/​10.​1145/​3459637.​3482208
Zurück zum Zitat Dement’eva, I. N., & Shakleina, M. V. (2019). Primeneniye indeksnogo metoda v issledovaniyakh potrebitel'skikh nastroyeniy naseleniya [Application of the index method in studies of consumer sentiment of the population]. Economic and Social Changes: Facts, Trends, Forecast, 12(1), 153–173. Dement’eva, I. N., & Shakleina, M. V. (2019). Primeneniye indeksnogo metoda v issledovaniyakh potrebitel'skikh nastroyeniy naseleniya [Application of the index method in studies of consumer sentiment of the population]. Economic and Social Changes: Facts, Trends, Forecast, 12(1), 153–173.
Zurück zum Zitat Engel, J. F., Blackwell, R. D., & Winiard, P. W. (1994). Perilaku Konsumen. Binarupa Aksara. Engel, J. F., Blackwell, R. D., & Winiard, P. W. (1994). Perilaku Konsumen. Binarupa Aksara.
Zurück zum Zitat Gonzalez, C. (2010). Social media best practices for communication professionals through the lens of the fashion industry [Published doctoral dissertation]. University of Southern California. Gonzalez, C. (2010). Social media best practices for communication professionals through the lens of the fashion industry [Published doctoral dissertation]. University of Southern California.
Zurück zum Zitat Gorelova, A. A. (2017). Bol'shiye dannyye i napravleniya ispol'zovaniya v marketing [Big data and directions of their use in marketing]. Actual Problems of the Humanities and Natural Sciences, 4–2, 11–16. Gorelova, A. A. (2017). Bol'shiye dannyye i napravleniya ispol'zovaniya v marketing [Big data and directions of their use in marketing]. Actual Problems of the Humanities and Natural Sciences, 4–2, 11–16.
Zurück zum Zitat Gorobchenko, S. L., & Artamonov, O. N. (2019). Novyye vozmozhnosti marketinga bol’shikh baz dannykh. dnevnik marketologa [New opportunities for marketing large databases. marketer’s diary]. Pipeline Fittings and Equipment, 2(101), 52–54. Gorobchenko, S. L., & Artamonov, O. N. (2019). Novyye vozmozhnosti marketinga bol’shikh baz dannykh. dnevnik marketologa [New opportunities for marketing large databases. marketer’s diary]. Pipeline Fittings and Equipment, 2(101), 52–54.
Zurück zum Zitat Kumar, S., Ashoka Rajan, R., Swaminathan, A., & Johnson, E. (2022a). Hyper-personalization and its impact on customer buying behaviour. In Data Intelligence and Cognitive Informatics: Proceedings of ICDICI 2022 (pp. 649–664). Springer Nature. Kumar, S., Ashoka Rajan, R., Swaminathan, A., & Johnson, E. (2022a). Hyper-personalization and its impact on customer buying behaviour. In Data Intelligence and Cognitive Informatics: Proceedings of ICDICI 2022 (pp. 649–664). Springer Nature.
Zurück zum Zitat Malaviya, P., & Wadhwa, S. (2005). Innovation management in organizational context: An empirical study. Global Journal of Flexible Systems Management, 6(2), 1–14. Malaviya, P., & Wadhwa, S. (2005). Innovation management in organizational context: An empirical study. Global Journal of Flexible Systems Management, 6(2), 1–14.
Zurück zum Zitat Mehta, R., Singh, H., Banerjee, A., Bozhuk, S., & Kozlova, N. (2020). Comparative analysis of the consequences of purchasing models transformation within the global digitalization of the economy. In IOP Conference series: Materials science and engineering (Vol. 940, p. 012071). https://doi.org/10.1088/1757-899X/940/1/012071 Mehta, R., Singh, H., Banerjee, A., Bozhuk, S., & Kozlova, N. (2020). Comparative analysis of the consequences of purchasing models transformation within the global digitalization of the economy. In IOP Conference series: Materials science and engineering (Vol. 940, p. 012071). https://​doi.​org/​10.​1088/​1757-899X/​940/​1/​012071
Zurück zum Zitat Nazarov, A. D. (2020). BIG DATA v marketinge: Trendy i problem [BIG DATA in marketing: Trends and problems]. Economics: Yesterday, Today, Tomorrow, 10(6–1), 169–176. Nazarov, A. D. (2020). BIG DATA v marketinge: Trendy i problem [BIG DATA in marketing: Trends and problems]. Economics: Yesterday, Today, Tomorrow, 10(6–1), 169–176.
Zurück zum Zitat Ramazanov, I. A., Panasenko, S. V., Cheglov, V. P., Krasil’nikova, E. A., & Nikishin, A. F. (2021). Retail transformation under the influence of digitalisation and technology development in the context of globalisation. Journal of Open Innovation: Technology, Market, and Complexity, 7(1), 49. https://doi.org/10.3390/joitmc7010049CrossRef Ramazanov, I. A., Panasenko, S. V., Cheglov, V. P., Krasil’nikova, E. A., & Nikishin, A. F. (2021). Retail transformation under the influence of digitalisation and technology development in the context of globalisation. Journal of Open Innovation: Technology, Market, and Complexity, 7(1), 49. https://​doi.​org/​10.​3390/​joitmc7010049CrossRef
Zurück zum Zitat Shkileva, A. V. (2021). Perspektivy ispol'zovaniya instrumenta big-data v marketingovykh issledovaniyakh mezhdunarodnykh kompaniy [Prospects for using the big-data tool in marketing research of international companies]. Theory of Law and Interstate Relations, 4(16), 309–315. Shkileva, A. V. (2021). Perspektivy ispol'zovaniya instrumenta big-data v marketingovykh issledovaniyakh mezhdunarodnykh kompaniy [Prospects for using the big-data tool in marketing research of international companies]. Theory of Law and Interstate Relations, 4(16), 309–315.
Zurück zum Zitat Shkor, O. N., & Pogoretskaya, A. D. (2021). BIG DATE v marketinge: Vozmozhnosti, problemy, issledovaniya i tendentsii [BIG DATE in marketing: Opportunities, problems, research and trends]. Big Data and Advanced Analytics, 7–2, 156–159. Shkor, O. N., & Pogoretskaya, A. D. (2021). BIG DATE v marketinge: Vozmozhnosti, problemy, issledovaniya i tendentsii [BIG DATE in marketing: Opportunities, problems, research and trends]. Big Data and Advanced Analytics, 7–2, 156–159.
Zurück zum Zitat Van Osselaer, S. M. J. (2008). Associative learning and consumer decisions. In C. P. Haugtvedt, P. M. Herr, & F. R. Kardes (Eds.), Handbook of consumer psychology (pp. 699–729). Taylor & Francis Group/Lawrence Erlbaum Associates. Van Osselaer, S. M. J. (2008). Associative learning and consumer decisions. In C. P. Haugtvedt, P. M. Herr, & F. R. Kardes (Eds.), Handbook of consumer psychology (pp. 699–729). Taylor & Francis Group/Lawrence Erlbaum Associates.
Zurück zum Zitat Vivek, V., Mahesh, T. R., Saravanan, C., & Kumar, K. V. (2022). A novel technique for user decision prediction and assistance using machine learning and NLP: A model to transform the E-commerce system. In Big data management in sensing (pp. 61–76). River Publishers. Vivek, V., Mahesh, T. R., Saravanan, C., & Kumar, K. V. (2022). A novel technique for user decision prediction and assistance using machine learning and NLP: A model to transform the E-commerce system. In Big data management in sensing (pp. 61–76). River Publishers.
Zurück zum Zitat Yadav, J., Yadav, A., Misra, M., Rana, N. P., & Zhou, J. (2023). Role of social media in technology adoption for sustainable agriculture practices: Evidence from Twitter analytics. Communications of the Association for Information Systems, 52, 833–851. https://doi.org/10.17705/1CAIS.05240CrossRef Yadav, J., Yadav, A., Misra, M., Rana, N. P., & Zhou, J. (2023). Role of social media in technology adoption for sustainable agriculture practices: Evidence from Twitter analytics. Communications of the Association for Information Systems, 52, 833–851. https://​doi.​org/​10.​17705/​1CAIS.​05240CrossRef
Metadaten
Titel
Predicting Consumer Behavior Based on Big Data of User-Generated Online Content in Retail Marketing
verfasst von
Gleb Karpushkin
Publikationsdatum
07.02.2024
Verlag
Springer India
Erschienen in
Global Journal of Flexible Systems Management / Ausgabe 1/2024
Print ISSN: 0972-2696
Elektronische ISSN: 0974-0198
DOI
https://doi.org/10.1007/s40171-024-00372-5

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