广东工业大学学报 ›› 2021, Vol. 38 ›› Issue (02): 26-33.doi: 10.12052/gdutxb.200143
刘洪伟1, 詹明君1, 高鸿铭1, 朱慧2, 梁周扬1
Liu Hong-wei1, Zhan Ming-jun1, Gao Hong-ming1, Zhu Hui2, Liang Zhou-yang1
摘要: 消费者的反馈对市场结构分析至关重要。通过消费者行为流数据追踪消费者对产品的真实外在表现, 利用贝叶斯推断识别决定性反馈行为并构建产品?行为介入矩阵, 采用K-means聚类算法和多维标度分析法对产品市场进行细分和可视化分析。研究发现, 消费者的点击和加入收藏夹行为对产品的市场份额有显著影响, 产品的市场结构揭示了少数产品的支配地位及产品在自身品牌内以及跨品牌间的竞争形势。从消费者出发, 基于其行为反馈进行的市场结构分析有助于管理者更有效地制定和调整新老产品的开发及定位等营销策略, 在提升自身竞争力的同时为消费者提供更优质的产品或服务。
中图分类号:
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