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Extraction and Recommendation of Experts on Topics of Interest in Social Networks as an Educational Tool

机译:作为教育工具的社交网络兴趣主题专家的提取和推荐

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Nowadays, Information and Communication Technologies (ICTs), along with Web 2.0 technologies, are enabling the globalization of Internet, providing a mean of access for the creation, dissemination and discussion of content. In this way, anyone can consult information of interest, assimilate it and turn it into useful knowledge. However, in recent years this new technological trend has driven users to generate a large amount of personal content, leaving aside any quality index, which translates into a new social problem known as information overload, infoxication or infobesity. The contact with information that is constantly increasing and of which validity has not been proven can cause difficulties, from the assimilation of knowledge to psychological disorders (anguish). The educational field is no stranger to this situation, as students use technology to support their academic processes. This research proposes the development of an experts recommendation tool (individuals who significantly manage a topic of interest) based on Twitter and Mendeley with a semi-supervised approach. In a Web application, keywords related to a topic of interest are entered and extracted from potential Mendeley experts, and then their accounts are located on Twitter. With this information, a user validates whether the Twitter profiles correspond to experts and authorizes the publication of a recommendation to students. With the semi-supervised approach, the accuracy of the recommendations is 100%, so the results obtained are promising.
机译:如今,信息和通信技术(ICT)以及Web 2.0技术正在使Internet全球化,为创建,传播和讨论内容提供了一种访问手段。这样,任何人都可以查阅感兴趣的信息,将其吸收并转化为有用的知识。但是,近年来,这种新的技术趋势驱使用户生成大量个人内容,而没有任何质量指标,这转化为一个新的社会问题,即信息超载,信息化或信息化。从知识的吸收到心理障碍(痛苦),与不断增加且有效性尚未得到证实的信息的接触会造成困难。在这种情况下,教育领域并不陌生,因为学生使用技术来支持他们的学术过程。这项研究提出了一种基于Twitter和Mendeley的半监督方法,开发一种专家推荐工具(对感兴趣的主题进行重大管理的个人)。在Web应用程序中,与潜在主题相关的关键字被输入并从潜在的Mendeley专家中提取,然后其帐户位于Twitter上。利用此信息,用户可以验证Twitter资料是否对应于专家,并授权向学生发布推荐。使用半监督方法,建议的准确性为100%,因此所获得的结果是有希望的。

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