知识共享网络(KSNets)衰落动态建模-维基百科案例

Rong-Huei Chen, Shi-Chung Chang, P. Luh
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引用次数: 0

摘要

在线知识共享网络(KSNets)通过共享对经济和社会福祉产生了重大影响。最成功的knet之一是Wikipedia,它允许用户以协作的方式创建内容,并免费为用户提供快速方便的访问。然而,最近的研究表明,“维基人”和新页面创建的数量一直在下降,这反映了用户贡献和新内容的减少。为了便于可持续性管理,本文旨在定量建模新内容的减少如何影响维基人的数量,进而影响内容的创作,并根据现有的维基百科数据预测下降的开始时间和速度。该建模方法采用嵌入扩展Bass扩散模型(AREBDM)的自回归模型来描述维基百科范围内维基人数量和内容发展的演变。然后用非线性最小二乘法从早期维基百科数据中提取模型参数。模拟预测与维基百科后期的实际下降轨迹非常吻合。我们的分析表明,新页面创建的减少及时导致了新维基人数量的下降,并且下降速度随着新内容的减少而增加。因此,我们的方法有可能预测衰退的时间和速度,以便尽早采取主动行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of Decline Dynamics of Knowledge Sharing Networks (KSNets) - A Wikipedia Case
Online knowledge sharing networks (KSNets) have made significant impacts on the economy as well as wellbeing of societies through sharing. One of the most successful KSNets is Wikipedia that allows users to create contents in a collaborative manner and to provide fast and easy access at no cost to users. Recent research, however, has shown that the numbers of “Wikipedians” and new page creations have been declining, reflecting decrease in user contributions and in new contents. To facilitate management for sustainability, this paper aims at quantitatively modeling how the decline in new contents affects the number of Wikipedians and in turn content creations, and predicting decline start time and speed based on available Wikipedia data. The novel modeling approach adopts auto-regression with an extended Bass Diffusion model (AREBDM) embedded to describe the Wikipedia-wide evolutions of the number of Wikipedians and content developments. Model parameters are then extracted by a nonlinear least square method from early Wikipedia data. Simulation predictions match well with actual Wikipedia decline trajectories of later stages. Our analysis shows that the decline of new page creation leads in time the decline of the number of new Wikipedians, and the decline speed increases with the decrease of new contents. Our approach therefore has the potential to predict decline time and speed so that proactive actions can be taken as early as possible.
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