Personalized Marketing Strategy in Digital Business Using Data Mining Approach

Yusnidar Yusnidar, Dudi Yudhakusuma, Fitriya Sari
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Abstract

The integration of personalized marketing strategies and data mining techniques in the realm of digital business has garnered significant attention in recent years. This study employs a mixed-methods approach to explore the dynamics between personalized marketing and data mining, specifically investigating customer perceptions and behavior in the Lhokseumawe and Cirebon regions. Through in-depth interviews, 80 respondents' views on personalized marketing were analyzed, highlighting both positive sentiments regarding tailored campaigns and concerns over data privacy. Furthermore, quantitative analysis was conducted using data from platforms such as WhatsApp, Instagram, TikTok, and Shopee Ecommerce. This revealed distinct customer segments, yielded improved product recommendations, and uncovered interesting purchasing patterns. The results emphasize the importance of striking a balance between personalization benefits and privacy protection. By harnessing the insights provided by data mining, businesses can enhance customer engagement and satisfaction, ultimately navigating the dynamic digital landscape more effectively. This study contributes practical implications and strategic insights for businesses seeking to optimize their digital marketing strategies.
使用数据挖掘方法制定数字业务中的个性化营销战略
近年来,个性化营销战略与数据挖掘技术在数字商业领域的融合备受关注。本研究采用混合方法探讨了个性化营销与数据挖掘之间的动态关系,特别是调查了罗克苏马维(Lhokseumawe)和井里汶(Cirebon)地区客户的看法和行为。通过深入访谈,分析了 80 位受访者对个性化营销的看法,其中既有对定制营销活动的积极态度,也有对数据隐私的担忧。此外,还利用 WhatsApp、Instagram、TikTok 和 Shopee 电子商务等平台的数据进行了定量分析。这揭示了不同的客户群,改进了产品推荐,并发现了有趣的购买模式。结果强调了在个性化优势和隐私保护之间取得平衡的重要性。通过利用数据挖掘提供的洞察力,企业可以提高客户参与度和满意度,最终更有效地驾驭动态的数字环境。这项研究为寻求优化数字营销战略的企业提供了实际意义和战略见解。
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