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社交媒体背景下群体性孤独的关系审视 被引量:3
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作者 任咏洁 刘春花 《湖北师范大学学报(哲学社会科学版)》 2023年第3期75-80,共6页
社交媒体的迅猛发展改变了人类的交往方式,创造了新型的人际关系,催发了一个极其普遍的群体性孤独现象:网络中人们之间的联系看似频繁,现实生活中却变得越发孤单与焦虑,可能引发某些社会问题。通过审视社交媒体背景下群体性孤独呈现的... 社交媒体的迅猛发展改变了人类的交往方式,创造了新型的人际关系,催发了一个极其普遍的群体性孤独现象:网络中人们之间的联系看似频繁,现实生活中却变得越发孤单与焦虑,可能引发某些社会问题。通过审视社交媒体背景下群体性孤独呈现的两组关系,可以得出一个基本的结论:人对媒介技术过度依赖是群体性孤独产生的重要原因,过多的网络社交促使现实人际关系弱化。与之相应,秉持人对技术的理性态度,采取科学的关系重构策略,重拾人与人的有效交流,定然能够帮助人们走出群体性孤独状态。 展开更多
关键词 群体性孤独 人际关系 社交媒体 网络社交
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A Machine Learning Approach: Enhancing the Predictive Performance of Pharmaceutical Stock Price Movement during COVID
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作者 Beilei He Weiyi Han Suet Ying Isabelle Hon 《Journal of Data Analysis and Information Processing》 2022年第1期1-21,共21页
Predicting stock price movement direction is a challenging problem influenced by different factors and capricious events. The conventional stock price prediction machine learning models heavily rely on the internal fi... Predicting stock price movement direction is a challenging problem influenced by different factors and capricious events. The conventional stock price prediction machine learning models heavily rely on the internal financial features, especially the stock price history. However, there are many outside-of-company features that deeply interact with the companies’ stock price performance, especially during the COVID period. In this study, we selected 9 COVID vaccine companies and collected their relevant features over the past 20 months. We added handcrafted external information, including COVID-related statistics and company-specific vaccine progress information. We implemented, evaluated, and compared several machine learning models, including Multilayer Perceptron Neural Networks with logistic regression and decision trees with boosting and bagging algorithms. The results suggest that the application of feature engineering and data mining techniques can effectively enhance the performance of models predicting stock price movement during the COVID period. The results show that COVID-related handcrafted features help to increase the model prediction accuracy by 7.3% and AUROC by 6.5% on average. Further exploration showed that with data selection the decision tree model with gradient, boosting algorithm achieved 70% in AUROC and 66% in the accuracy. 展开更多
关键词 Machine Learning Stock Price Trend Prediction Feature Engineering
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