使用BAM挖掘和可视化在线Web内容:品牌关联地图

Navot Akiva, Eliyahu Greitzer, Yakir Krichman, Jonathan Schler
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引用次数: 17

摘要

在本文中,我们描述了我们的品牌关联地图(BAM)工具,该工具可以映射和可视化消费者在数十亿个独立的在线对话中自然思考和谈论品牌的方式。BAM是一种半监督工具,它利用文本挖掘算法,从数十亿在线对话中产生的数百万个候选术语中识别关键的相关短语、术语和问题。然后将与给定品牌最相关的短语投影并绘制到视觉靶心表示上。BAM的可视化显示了品牌(显示在可视化的中心)与每个高度相关的术语之间的相关性级别,以及所有呈现的术语之间的内部相关性,其中相同径向角度上的术语表示经常一起提到的术语的“聚集”讨论。我们发现BAM对于从大量消费者生成的媒体(CGM)文档中提取与品牌高度相关的各种直觉和信念非常有用,从而更好地掌握消费者如何真正将品牌语境化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining and Visualizing Online Web Content Using BAM: Brand Association Map
In this paper, we describe our Brand Association Map (BAM) tool which maps and visualizes the way consumers naturally think and talk about brands across billions of unaided conversations online. BAM is a semi-supervised tool that leverages text-mining algorithms to identify key correlated phrases, terms and issues out of millions of candidate terms which were derived from billions of online conversations. The most correlated phrases with a given brand are then projected and plotted onto visual bull's eye representation. BAM's visualization illustrates both the correlation level between a brand (appears in the center of the visualization) and each of the highly correlated terms as well as the inner correlations among all presented terms, where terms on the same radial angel represent a "clustered" discussion of terms frequently mentioned together. We found BAM useful for extracting various intuitions and beliefs that are highly correlated with brands to better grasp how consumers really contextualize them, out of massive consumer generated media (CGM) documents.
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