Categorizing Online Advertisements with Machine Learning Models
Publish place: Journal of Business Data Science Research، Vol: 3، Issue: 1
Publish Year: 1403
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:
JR_JBDSR-3-1_003
تاریخ نمایه سازی: 27 تیر 1403
Abstract:
Advertising segmentation, also known as audience or market segmentation, constitutes a critical facet of marketing. It involves subdividing a large target population into more manageable groups or segments. By employing advertising grouping, businesses can tailor content and keywords to each group of advertisements, thereby enhancing the effectiveness of their marketing efforts. This project explores two machine learning models for advertising grouping, achieving an impressive efficiency rate of over ۹۰%. The study encompasses a dataset of ۲۰۰۰ online advertisements divided into five advertising groups, with ۱۶۰۰ data points used for training and ۴۰۰ for testing. The results indicate that the Support Vector Classifier (SVC) and Linear Regression (LR) models perform well in the categorization of advertisements.Advertising segmentation, also known as audience or market segmentation, constitutes a critical facet of marketing. It involves subdividing a large target population into more manageable groups or segments. By employing advertising grouping, businesses can tailor content and keywords to each group of advertisements, thereby enhancing the effectiveness of their marketing efforts. This project explores two machine learning models for advertising grouping, achieving an impressive efficiency rate of over ۹۰%. The study encompasses a dataset of ۲۰۰۰ online advertisements divided into five advertising groups, with ۱۶۰۰ data points used for training and ۴۰۰ for testing. The results indicate that the Support Vector Classifier (SVC) and Linear Regression (LR) models perform well in the categorization of advertisements.
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Authors
Mohammad Taghi Taghavifard
Department of Management, Faculty of Management and Accounting, Allameh Tabataba’i University, Tehran, Iran
Khatereh Farazmand
Department of Health, Faculty of Health, Shahid Beheshti University of Medical Sciences, Tehran, Iran
Saeedreza Jadidi
Department of Mechanical, Industrial and Aerospace Engineering, Concordia University, Montreal, QC, H۳G ۱M۸, Canada
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