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LSTM Response Models for Direct Marketing Analytics: Replacing Feature Engineering with Deep Learning

机译:直接营销分析的LSTM响应模型:用深层学习取代特色工程

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摘要

In predictive modeling, firms often deal with high-dimensional data that span multiple channels, websites, demographics, purchase types, and product categories. Traditional customer response models rely heavily on feature engineering, and their performance depends on the analyst's domain knowledge and expertise to craft relevant predictors. As the complexity of data increases, however, traditional models grow exponentially complicated. In this paper, we demonstrate that long-short term memory (LSTM) neural networks, which rely exclusively on raw data as input, can predict customer behaviors with great accuracy. In our first application, a model outperforms standard benchmarks. In a second, more realistic application, an LSTM model competes against 271 hand-crafted models that use a wide variety of features and modeling approaches. It beats 269 of them, most by a wide margin. LSTM neural networks are excellent candidates for modeling customer behavior using panel data in complex environments (e.g., direct marketing, brand choices, clickstream data, churn prediction). (C) 2020 Direct Marketing Educational Foundation, Inc. dba Marketing EDGE. All rights reserved.
机译:在预测建模中,公司经常处理跨越多个通道,网站,人口统计数据,购买类型和产品类别的高维数据。传统客户响应模型严重依赖于特色工程,其性能取决于分析师的域知识和专业知识来制作相关预测因素。然而,随着数据的复杂性增加,传统模型的成长复杂化。在本文中,我们证明了长期内存(LSTM)神经网络,它专门用于原始数据作为输入,可以以极高的准确性预测客户行为。在我们的第一个应用程序中,模型优于标准基准。在第二个更现实的应用中,LSTM模型竞争271种手工制作模型,该模型使用各种特征和建模方法。它击败了269个,最宽的边缘。 LSTM神经网络是用于使用复杂环境中的面板数据建模客户行为的优秀候选者(例如,直接营销,品牌选择,点击流数据,搅拌预测)。 (c)2020直接营销教育基金会,Inc.DBA营销优势。版权所有。

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