基于聚类和人格问卷数据预测IGD风险的初步研究

Xiaoliang Gong, Bozhong Long, Kun Fang, Zongling Di, Yichu Hou, Lei Cao
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引用次数: 1

摘要

随着互联网的发展,很多人被困在网络中,尤其是青少年对网络游戏的依赖,扰乱了他们的正常生活。579名大一新生在入学第一周接受了性格问卷调查,半年后接受了平均绩点(GPA)调查。问卷包括自我控制量表(SCS)、Barratt冲动量表(BIS)和中国大五人格量表(CBF)。本研究采用多聚类算法构建网络游戏障碍(IGD)风险预测模型,包括FCM、K-means和Hierarchical用于训练模型。这是首次尝试通过人格特征来预测患IGD的风险。结果表明,不同的聚类算法将问卷数据很好地划分为三组,这三组具有与IGD行为相关的相似人格特征。但与各组的GPA相比,预测模型的效率似乎不太令人满意。未来的模型还需要进一步优化。
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A prediction based on clustering and personality questionnaire data for IGD risk: A preliminary work
With the development of the Internet, a lot of people trapped in the network, especially the adolescent depending on the network game and disturbing their normal life. 579 freshmen participated in this work who were collected the personality questionnaires in the first week they came in university and their grades points average (GPA) after half year. The questionnaires were including Self-Control (SCS), Barratt impulse Inventory (BIS) and Chinese Big Five Personality (CBF). This work used multi-clustering algorithms to construct the models of predicting for Internet game disorder (IGD) risk, including FCM, K-means, and Hierarchical for training model. This is the first try to predict the risk of IGD by personality traits. The results shown the questionnaire data were well separated by different clustering algorithms into three groups who were shared the analogous personality traits which has a relationship with the behavior of IGD. But compared to the GPA of each group, the efficiency of the prediction model seems not so satisfactory. There need more efforts to optimized the model in the future.
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