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Social network analysis for personalized characterization and risk assessment of alcohol use disorders in adolescents using semantic technologies

机译:使用语义技术对青少年酒精滥用障碍进行个性化表征和风险评估的社交网络分析

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Alcohol Use Disorder (AUD) is a major concern for public health organizations worldwide, especially as regards the adolescent population. The consumption of alcohol in adolescents is known to be influenced by seeing friends and even parents drinking alcohol. Building on this fact, a number of studies into alcohol consumption among adolescents have made use of Social Network Analysis (SNA) techniques to study the different social networks (peers, friends, family, etc.) with whom the adolescent is involved. These kinds of studies need an initial phase of data gathering by means of questionnaires and a subsequent analysis phase using the SNA techniques. The process involves a number of manual data handling stages that are time consuming and error-prone. The use of knowledge engineering techniques (including the construction of a domain ontology) to represent the information, allows the automation of all the activities, from the initial data collection to the results of the SNA study. This paper shows how a knowledge model is constructed, and compares the results obtained using the traditional method with this, fully automated model, detailing the main advantages of the latter. In the case of the SNA analysis, the validity of the results obtained with the knowledge engineering approach are compared to those obtained manually using the UCINET, Cytoscape, Pajek and Gephi to test the accuracy of the knowledge model.
机译:酒精使用障碍(AUD)是全世界公共卫生组织的主要关注点,尤其是对于青少年人群。众所周知,青少年饮酒会受到朋友甚至父母饮酒的影响。基于这一事实,许多有关青少年饮酒的研究已经利用社交网络分析(SNA)技术来研究青少年所涉及的不同社交网络(同伴,朋友,家人等)。这些类型的研究需要通过问卷调查收集数据的初始阶段,以及随后使用SNA技术进行分析的阶段。该过程涉及许多手动数据处理阶段,这些阶段既耗时又容易出错。使用知识工程技术(包括领域本体的构建)来表示信息,可以使从初始数据收集到SNA研究结果的所有活动自动化。本文展示了如何构建知识模型,并将使用传统方法获得的结果与这种全自动模型进行了比较,详细介绍了后者的主要优势。对于SNA分析,将使用知识工程方法获得的结果的有效性与使用UCINET,Cytoscape,Pajek和Gephi手动获得的结果进行比较,以测试知识模型的准确性。

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