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A Pipeline for Measuring Brand Loyalty Through Social Media Mining

机译:通过社交媒体挖掘来衡量品牌忠诚度的管道

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Enhancing customer relationships through social media is an area of high relevance for companies. To this aim, Social Business Intelligence (SBI) plays a crucial role by supporting companies in combining corporate data with user-generated content, usually available as textual clips on social media. Unfortunately, SBI research is often constrained by the lack of publicly-available, real-world data for experimental activities. In this paper, we describe our experience in extracting social data and processing them through an enrichment pipeline for brand analysis. As a first step, we collect texts from social media and we annotate them based on predefined metrics for brand analysis, using features such as sentiment and geolocation. Annotations rely on various learning and natural language processing approaches, including deep learning and geographical ontologies. Structured data obtained from the annotation process are then stored in a distributed data warehouse for further analysis. Preliminary results, obtained from the analysis of three well known ICT brands, using data gathered from Twitter, news portals, and Amazon product reviews, show that different evaluation metrics can lead to different outcomes, indicating that no single metric is dominant for all brand analysis use cases.
机译:通过社交媒体提高客户关系是对公司的高相关领域。为此目的,社会商业智能(SBI)通过支持公司数据与用户生成的内容组合的公司来说,通常在社交媒体上作为文本剪辑提供了至关重要的作用。不幸的是,SBI研究往往受到缺乏公开的实际数据的实验活动数据的限制。在本文中,我们描述了我们在提取社交数据和通过丰富管道进行品牌分析来处理它们的经验。作为第一步,我们从社交媒体中收集文本,我们通过对品牌分析的预定义指标进行注释,使用情绪和地理位置等功能。注释依赖于各种学习和自然语言处理方法,包括深入学习和地理本体。然后将从注释过程获得的结构化数据存储在分布式数据仓库中以进一步分析。初步结果从分析了三个众所周知的ICT品牌,使用从Twitter,新闻门户网站和亚马逊产品评论收集的数据,表明不同的评估指标可能导致不同的结果,表明所有品牌分析没有单一度量都是占主导地位的用例。

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