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首页> 外文期刊>International Journal of Engineering Research and Applications >Identifying Structures in Social Conversations in NSCLC Patients through the Semi-Automatic extraction of Topical Taxonomies
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Identifying Structures in Social Conversations in NSCLC Patients through the Semi-Automatic extraction of Topical Taxonomies

机译:通过局部分类法的半自动提取识别非小细胞肺癌患者社交活动的结构

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The exploration of social conversations for addressing patient's needs is an important analytical task in which many scholarly publications are contributing to fill the knowledge gap in this area. The main difficulty remains the inability to turn such contributions into pragmatic processes the pharmaceutical industry can leverage in order to generate insight from social media data, which can be considered as one of the most challenging source of information available today due to its sheer volume and noise. This study is based on the work by Scott Spangler and Jeffrey Kreulen and applies it to identify structure in social media through the extraction of a topical taxonomy able to capture the latent knowledge in social conversations in health-related sites. The mechanism for automatically identifying and generating a taxonomy from social conversations is developed and pressured tested using public data from media sites focused on the needs of cancer patients and their families. Moreover, a novel method for generating the category's label and the determination of an optimal number of categories is presented which extends Scott and Jeffrey's research in a meaningful way. We assume the reader is familiar with taxonomies, what they are and how they are used.
机译:探索满足人们需求的社交对话是一项重要的分析任务,许多学术出版物都在努力填补这一领域的知识空白。主要的困难仍然是无法将这些贡献转化为制药业可以利用的务实过程,以便从社交媒体数据中获得洞察力,由于社交媒体数据的数量和噪音巨大,可以将其视为当今可用的最具挑战性的信息来源之一。这项研究基于Scott Spangler和Jeffrey Kreulen的工作,并通过提取主题分类法将其用于识别社交媒体中的结构,该分类法能够捕获与健康相关的网站中社交对话中的潜在知识。通过使用媒体网站上针对癌症患者及其家人需求的公共数据,开发了自动识别社交对话并从社交对话中生成分类法的机制,并对其进行了压力测试。此外,提出了一种用于生成类别标签和确定最佳类别数量的新颖方法,该方法以有意义的方式扩展了Scott和Jeffrey的研究。我们假设读者熟悉分类法,分类法和使用方法。

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