Title of article :
Neural Network Approach for Herbal Medicine Market Segmentation
Author/Authors :
Sherej-Sharifi, Azita Department of Business Management - Central Tehran Branch Islamic Azad University,Tehran, Iran , Bazaiee, Gasem-Ali Department of Business Management - Central Tehran Branch Islamic Azad University, Tehran, Iran
Abstract :
Market segmentation is the start point of executing
targeted marketing strategy. This study aims to determine fit
dimensions and appropriate specifications for the segmentation of
herbal medicines market in order to provide production and market
departments with fit strategies by identifying the profile of the
market customers and recognizing their differences in the identified
indices. This is an applied study in terms of objective and a surveyanalytical
cross-sectional study in terms of method. Data was
collected using interview and questionnaire in the qualitative and
quantitative sections, respectively. The population of study consists
of the end users of different herbal medicines in Iran. Regarding
the unlimited population of study, sample size was limited to 460
users selected from active pharmacies located in different regions of
Tehran based on stratified sampling method. Neural network
technique was used to analyze data and to determine the number
of segments. According to the results by running neural network
algorithm in different clusters, the best fit market segmentation is
practiced by 5 clusters. Each cluster differs with others; therefore a fit strategy for each cluster should be formulated and executed in
order to simultaneously attribute value to both customers and
market.
Keywords :
Neural Network , Market Segmentation , Behavioral Characteristics
Journal title :
Astroparticle Physics