To understand the growing phenomena of new vocabulary on nationwide online social media, we analyzed monthly word count time series extracted from approximately 1 billion Japanese blog articles from 2007 to 2019. In particular, we first introduced the extended logistic equation by adding one parameter to the original equation and showed that the model can consistently reproduce various patterns of actual growth curves, such as the logistic function, linear growth, and finite-time divergence. Second, by analyzing the model parameters, we found that the typical growth pattern is not only a logistic function, which often appears in various complex systems, but also a nontrivial growth curve that starts with an exponential function and asymptotically approaches a power function without a steady state. Furthermore, we observed a connection between the functional form of growth and the peak-out. Finally, we showed that the proposed model and statistical properties are also valid for Google Trends data (English, French, Spanish, and Japanese), which is a time series of the nationwide popularity of search queries.
翻译:为了了解全国在线社交媒体上新词汇日益增长的现象,我们分析了从2007年至2019年从约10亿日本博客文章中抽取的每月字数计时序列。 特别是,我们首先引入了扩展后勤方程,在原始方程中增加了一个参数,并表明该模型可以不断复制各种实际增长曲线模式,如物流功能、线性增长和固定时间差异。第二,通过分析模型参数,我们发现典型的增长模式不仅是一种后勤功能,它经常出现在各种复杂的系统中,而且是一种非边际增长曲线,以指数函数为起点,以静态方式接近权力功能,而没有稳定状态。此外,我们观察到增长的功能形式与峰值之间的联系。最后,我们显示拟议的模型和统计属性对谷歌趋势数据(英文、法文、西班牙文和日文)也有效,而谷歌趋势数据是全国搜索普及的时间序列。