Provide a Strategic Model based on Machine Learning Approach to Automatically Opinion Assessment and Explore Product Information in Digital Marketing
Subject Areas : Strategic Management ResearchesAlireza AshouriRoudposhti 1 , hormoz mehrani 2 , Karim Hamdi 3
1 - Department of Business Management, Islamic Azad University- Science and Research Branch, Tehran, Iran
2 - Department of Management, Ghazali Higher Education Institute, Qazvin, Iran
3 - Department of Business Management, Islamic Azad University- Science and Research Branch, Tehran, Iran
Keywords: Machine Learning, Artificial Intelligence, Digital Marketing, Marketing capabilities, Opinion Assessment,
Abstract :
The present study has tried to provide an automated strategic model for classifying and exploring the opinions presented about a particular product, brand or service by using machine learning and survey techniques. Applying such a strategic model can be very effective in identifying the characteristics of brands and factor clustering between them and provide very valuable information in this regard. The results of this evaluation can be used in the development of marketing management strategies and quantitative or qualitative improvement of this factor. The model based on machine learning and deep neural network identifies related opinions, measures different characteristics at different levels of evaluation, and automatically categorizes opinions depending on the quality of the presentation. The output of this model is efficiently imported by using marketing capabilities to improve the sales of defined goods / brands / services. The data set used in this study is related to the collection of comments of Persian language users of the online sales site of Digikala and Holokish, which was uploaded as an educational-experimental (70% educational data and 30% experimental data) in three alternate models in order to identify and the classification of the various properties of the goods and services provided in the dataset has been used. The proposed model uses error functions to calculate the amount of computational error to evaluate the capability to be able to provide the degree of deviation from the correct values for its predicted information. For this purpose, the mean square error and the square root mean square error have been used. The results show the high accuracy of the model of evaluations and prediction of different conditions.
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