利用智能可视分析改进 DNN 辅助客户行为分析

HU Ming, Qinghua Li, Hao Zhou
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引用次数: 0

摘要

:客户行为分析使用定性和定量方法研究客户旅程的每个阶段,以了解消费者行为的动机。利用可视化分析,营销人员可以破解复杂的客户重定向世界,使企业能够将数据可视化,并提出和回答无限的问题。正因为如此,他们才能更好地理解消费者是谁,以及他们为什么会以某种方式行事。本文提供了一个重要的解决方案,名为 "改进的 DNN 辅助客户行为分析(iDNN-CBA)",具有智能可视化分析功能。本文提出了一个收集客户评论和反馈的互动部分。使用改进型深度神经网络(iDNN)收集和处理客户的面部表情,并通过模式分析进行可视化分析。通过公共数据集 KAGGLE 的实验分析,对提出的 iDNN-CBA 进行了训练和验证,观察到与其他现有行为分析方案相比,iDNN-CBA 的准确率最高,达到 96.55%。
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Improved DNN-assisted Customer Behavior Analysis with Smart Visual Analytics
: A customer behavior analysis examines each customer journey stage using qualitative and quantitative methodologies to understand what motivates consumer behavior. With visual analytics, marketers can decipher the complicated world of customer retargeting, allowing businesses to visualize data and ask and answer infinite questions. Because of this, they are better able to comprehend who their consumers are and why they act in certain ways. This paper provides a significant solution named improved DNN-assisted Customer Behavior Analysis (iDNN-CBA) with smart visual analytics. This paper suggests an interactive section for collecting customer reviews and feedback. Their facial expressions have been collected and processed using the improved deep neural network (iDNN), and the visual analytics occurs with pattern analysis. The proposed iDNN-CBA has been trained and validated using the experimental analysis by public dataset KAGGLE and observed the highest accuracy of 96.55% compared to other existing behavior analysis schemes.
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