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LARGE-SCALE NETWORK ANALYSIS FOR ONLINE SOCIAL BRAND ADVERTISING

机译:在线社交品牌广告的大型网络分析

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This paper proposes an audience selection framework for online brand advertising based on user activities on social media platforms. It is one of the first studies to our knowledge that develops and analyzes implicit brand-brand networks for online brand advertising. This paper makes several contributions. We first extract and analyze implicit weighted brand-brand networks, representing interactions among users and brands, from a large dataset. We examine network properties and community structures and propose a framework combining text and network analyses to find target audiences. As a part of this framework, we develop a hierarchical community detection algorithm to identify a set of brands that are closely related to a specific brand. This latter brand is referred to as the "focal brand." We also develop a global ranking algorithm to calculate brand influence and select influential brands from this set of closely related brands. This is then combined with sentiment analysis to identify target users from these selected brands. To process large-scale datasets and networks, we implement several MapReduce-based algorithms. Finally, we design a novel evaluation technique to test the effectiveness of our targeting framework. Experiments conducted with Facebook data show that our framework provides significant performance improvements in identifying target audiences for focal brands.
机译:本文提出了一种基于社交媒体平台上用户活动的在线品牌广告受众选择框架。这是我们所学的第一批研究之一,该研究开发和分析了用于在线品牌广告的隐式品牌网络。本文做出了一些贡献。我们首先从大型数据集中提取和分析隐式加权品牌-品牌网络,以表示用户和品牌之间的互动。我们研究了网络属性和社区结构,并提出了一个结合文本和网络分析以找到目标受众的框架。作为该框架的一部分,我们开发了一种分层社区检测算法,以识别与特定品牌密切相关的一组品牌。后一个品牌被称为“焦点品牌”。我们还开发了一种全球排名算法,以计算品牌影响力并从这组紧密相关的品牌中选择有影响力的品牌。然后将其与情感分析相结合,以从这些选定的品牌中识别目标用户。为了处理大规模数据集和网络,我们实现了几种基于MapReduce的算法。最后,我们设计了一种新颖的评估技术来测试我们的目标框架的有效性。使用Facebook数据进行的实验表明,我们的框架在确定重点品牌的目标受众方面提供了显着的性能改进。

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