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Automated Linguistic Personalization of Targeted Marketing Messages Mining User-Generated Text on Social Media

机译:目标营销消息的自动语言个性化,在社交媒体上挖掘用户生成的文本

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Personalizing marketing messages for specific audience segments is vital for increasing user engagement with advertisements, but it becomes very resource-intensive when the marketer has to deal with multiple segments, products or campaigns. In this research, we take the first steps towards automating message personalization by algorithmi-cally inserting adjectives and adverbs that have been found to evoke positive sentiment in specific audience segments, into basic versions of ad messages. First, we build language models representative of linguistic styles from user-generated textual content on social media for each segment. Next, we mine product-specific adjectives and adverbs from content associated with positive sentiment. Finally, we insert extracted words into the basic version using the language models to enrich the message for each target segment, after statistically checking in-context readability. Decreased cross-entropy values from the basic to the transformed messages show that we are able to approach the linguistic style of the target segments. Crowdsourced experiments verify that our personalized messages are almost indistinguishable from similar human compositions. Social network data processed for this research has been made publicly available for community use.
机译:个性化特定受众群体的营销信息对于提高用户对广告的参与度至关重要,但是当营销人员必须处理多个细分市场,产品或广告系列时,资源将变得非常消耗资源。在这项研究中,我们迈出了第一步,通过在算法基础上将广告语和副词插入算法的基本版本中,这些算法是将在特定受众群体中能够唤起积极情绪的形容词和副词插入算法中的。首先,我们从社交媒体上每个部分的用户生成的文本内容中构建代表语言风格的语言模型。接下来,我们从与积极情绪相关的内容中挖掘特定于产品的形容词和副词。最后,在统计检查上下文中的可读性之后,我们使用语言模型将提取的单词插入基本版本中,以丰富每个目标段的消息。从基本消息到转换后的消息的交叉熵值减小,表明我们能够接近目标句段的语言风格。众包实验证明,我们的个性化消息与相似的人类成分几乎没有区别。为这项研究处理的社交网络数据已公开提供给社区使用。

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