Targeting audience personas with programmatic geographic segments using unsupervised methods

IF 1.7 Q3 MANAGEMENT
Viraj Noorithaya
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引用次数: 0

Abstract

The digital advertising industry, where clients advertise to existing and potential customers through digital channels, is going through a rapid transformation. This is necessitated by evolving privacy laws such as General Data Protection Regulation (GDPR) and California Consumer Privacy Act (CCPA), heading towards a cookie-less future by decreasing reliance on Personally identifiable information (PII). While approaches like Data clean rooms, Federated learning have started gaining prominence, the current AdTech space is highly fragmented regarding channels, standards, platforms, inventory, cookieless targeting approaches, and compatibility.
For marketers, it is crucial to have generalized and interoperable but privacy-compliant approaches to reach their audience. While it is safer not to limit to a specific advertising stack, it must not come at a substantial performance cost. When a brand starts an advertising campaign, they usually have objectives and a target audience in mind. While their objectives are aligned with business goals and performance metrics, the desired audience personas are defined by either market research or new/ historically well-performing consumer profiles suited to their products and services. This paper presents ways to convert multi-characteristic personas into geographic targeting without relying on cookie-based data. These geographic segments have broad compatibility across marketing platforms.
We sourced data from 5 privacy-compliant datasets containing ∼9000 variables aggregated at Forward Sortation Area (FSA) level by a leading Canadian data provider. These variables span a wide range of characteristics such as demographic, econometric, lifestyle and media choices, brand affinities, purchasing behaviors, and spending. The persona-related variables are optionally indexed, after which dimensionality reduction techniques, such as Principal Component Analysis (PCA) and Uniform Manifold Approximation and Projection (UMAP), were applied. Unsupervised learning methods, such as KMeans, KMeans++ and Gaussian Mixture Models (GMMs), were then used to build an optimal number of FSA clusters. These clusters were then analyzed to identify those beneficial to targeting, which helps reduce the number of FSAs to target. The final output for marketing consumption is in the form of FSA segments for targeting aligned with our desired profiles. We analyze campaign metrics against different combinations of dimensional reduction and clustering techniques to assess what works well for advertising.
使用无监督的方法,通过程序化的地理细分来定位受众角色
客户通过数字渠道向现有和潜在客户投放广告的数字广告行业正在经历快速转型。《通用数据保护条例》(GDPR)和《加州消费者隐私法》(CCPA)等不断发展的隐私法要求这样做,通过减少对个人身份信息(PII)的依赖,走向无cookie的未来。虽然数据洁净室、联邦学习等方法已经开始崭露头角,但目前的广告技术领域在渠道、标准、平台、库存、无cookie定位方法和兼容性方面高度分散。对于营销人员来说,拥有通用的、可互操作的、但又符合隐私的方法来接触他们的受众是至关重要的。虽然不限制特定的广告堆栈更安全,但它一定不能以大量的性能成本为代价。当一个品牌开始广告活动时,他们通常有目标和目标受众。虽然他们的目标与业务目标和绩效指标一致,但期望的受众角色是由市场研究或适合其产品和服务的新/历史上表现良好的消费者形象定义的。本文提出了在不依赖基于cookie的数据的情况下将多特征人物角色转换为地理定位的方法。这些地理区域在营销平台之间具有广泛的兼容性。我们从5个符合隐私标准的数据集中获取数据,这些数据集包含约9000个变量,由一家领先的加拿大数据提供商在前向分类区(FSA)级别汇总。这些变量涵盖了广泛的特征,如人口统计学、计量经济学、生活方式和媒体选择、品牌亲和力、购买行为和支出。对人物相关变量进行可选索引,然后应用主成分分析(PCA)和均匀流形逼近与投影(UMAP)等降维技术。然后使用KMeans、kmeans++和高斯混合模型(GMMs)等无监督学习方法来构建最优数量的FSA聚类。然后对这些簇进行分析,以确定那些有利于靶向的簇,这有助于减少要靶向的fsa的数量。营销消费的最终输出是与我们期望的配置文件一致的FSA细分目标的形式。我们根据不同的降维和聚类技术组合来分析活动指标,以评估哪些对广告有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.20
自引率
5.90%
发文量
31
审稿时长
68 days
期刊介绍: IIMB Management Review (IMR) is a quarterly journal brought out by the Indian Institute of Management Bangalore. Addressed to management practitioners, researchers and academics, IMR aims to engage rigorously with practices, concepts and ideas in the field of management, with an emphasis on providing managerial insights, in a reader friendly format. To this end IMR invites manuscripts that provide novel managerial insights in any of the core business functions. The manuscript should be rigorous, that is, the findings should be supported by either empirical data or a well-justified theoretical model, and well written. While these two requirements are necessary for acceptance, they do not guarantee acceptance. The sole criterion for publication is contribution to the extant management literature.Although all manuscripts are welcome, our special emphasis is on papers that focus on emerging economies throughout the world. Such papers may either improve our understanding of markets in such economies through novel analyses or build models by taking into account the special characteristics of such economies to provide guidance to managers.
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