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Analyzing Social Media Discourse - An Approach using Semi-supervised Learning

机译:分析社交媒体话语 - 一种利用半监督学习的方法

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摘要

The ability to handle large amounts of unstructured information, to optimize strategic business opportunities, and to identify fundamental lessons among competitors through benchmarking, are essential skills of every business sector. Currently, there are dozens of social media analytics' applications aiming at providing organizations with informed decision making tools. However, these applications rely on providing quantitative information, rather than qualitative information that is relevant and intelligible for managers. In order to address these aspects, we propose a semi-supervised learning procedure that discovers and compiles information taken from online social media, organizing it in a scheme that can be strategically relevant. We illustrate our procedure using a case study where we collected and analysed the social media discourse of 43 organizations operating on the Higher Public Polytechnic Education Sector. During the analysis we created an "editorial model" that characterizes the posts in the area. We describe in detail the training and the execution of an ensemble of classifying algorithms. In this study we focus on the techniques used to increase the accuracy and stability of the classifiers.
机译:能够处理大量非结构化信息,优化战略商机,并通过基准测试,识别竞争对手之间的基本课程,是每个企业部门的基本技能。目前,有几十个社交媒体分析的应用程序,旨在提供具有明智的决策工具的组织。然而,这些应用程序依赖于提供定量信息,而不是对管理人员相关和可理解的定性信息。为了解决这些方面,我们提出了一个半监督的学习程序,即发现和编制从在线社交媒体所采取的信息,以战略相关的计划组织它。我们使用案例研究来说明我们的程序,我们收集并分析了在高等公共理工学院教育部门运营的43个组织的社会媒体话语。在分析过程中,我们创建了一个“编辑模型”,其特征在该地区的帖子中。我们详细描述了培训和执行分类算法的合奏。在这项研究中,我们专注于用于提高分类器的准确性和稳定性的技术。

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