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Targeted Marketing in Herbal Medicine; Application for Grounded Theory and K- Mean Algorithm

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  • Sharifi, Azita Sherej
  • Bazaee, Ghasemali
  • Heydari, Seyed Abbas

Abstract

One of the major industries to meet the expansion goals in human, social, and economic aspects is herbal medicine. Marketing department, producers, and entrepreneurs play an important role in applying potentials in this industry, but, as herbal medicine scholars argue, herbal medicine market share in Iran is less than 4 percent. This might be due to neglecting executive targeted marketing. The participants of the study included all people going to pharmacies to purchase herbal medicines. Purposeful and classified sampling methods were used in qualitative and quantitative sections, respectively. As to the qualitative phase, grounded theory method was applied, while K-means approach was used for quantitative data analysis. Qualitative findings resulted in the extraction of eight essential categories. Moreover, the results of K- mean algorithm suggested that the best mode is segmenting this market (i.e., herbal medicine) into four segments. The segments differ from each other in terms of the selected categories. Results contribute to presenting an appropriate strategy for each segment in order to simultaneously create value for both customers and market in particular and create facilities for expansion and growth of herbal medicine industry in general.

Suggested Citation

  • Sharifi, Azita Sherej & Bazaee, Ghasemali & Heydari, Seyed Abbas, 2019. "Targeted Marketing in Herbal Medicine; Application for Grounded Theory and K- Mean Algorithm," International Journal of Agricultural Management and Development (IJAMAD), Iranian Association of Agricultural Economics, vol. 9(4).
  • Handle: RePEc:ags:ijamad:301187
    DOI: 10.22004/ag.econ.301187
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    Cited by:

    1. Roxana-Larisa Cadar & Antonio Amuza & Diana Elena Dumitras & Mihaela Mihai & Cristina Bianca Pocol, 2021. "Analysing Clusters of Consumers Who Use Medicinal and Aromatic Plant Products," Sustainability, MDPI, vol. 13(15), pages 1-16, August.

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    Keywords

    Farm Management;

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