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The strength distribution and combined duration prediction of online collective actions: Big data analysis and BP neural networks

机译:在线集体行动的强度分布和综合持续时间预测:大数据分析与BP神经网络

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Unveiling the patterns and mechanisms of human behaviors is the core task of collective action studies. In terms of the strength (impacts or power) of collective actions, some of them have bigger political influences or societal impacts than others, and the success chance or probability therefore varies a great deal. Some online collective actions have little effects or favorable outcomes, while others have successfully changed policies or decisions made by local or central governments; and others even overthrow the governments. Hence, the indicator of strength is applied to measure the powers, pressures, attentions, concerns, and impacts generated by certain collective actions. The strength of collective action is defined and calculated by the life function, i.e. it is defined as the summation or integral of life function (viability or total participation) divided by the durations or spans. There exists some regularity in terms of the strength's distribution under both simulations and big data exploration. The peak model is utilized to simulate online collective actions, and the distribution of strength (N=1000) is close to normal distributions; it indicates by the observed big data cases (N=159) that it follows the lognormal distribution, which also holds true for subgroups. The introduction of strength paves the way for predicting the durations or spans of online collective actions. For the combined prediction with three factors (peak's timing, peak's heights, and viability), the accuracy of predicting durations or spans is close to 100% for both simulated data and observed big data. For separate predictions with single factor, the accuracy is closer to 100% as well. (C) 2019 Elsevier B.V. All rights reserved.
机译:揭示人类行为的模式和机制是集体行动研究的核心任务。就集体行动的实力(影响或权力)而言,其中一些人具有比其他人更大的政治影响或社会影响,因此成功的机会或概率因其而异。一些在线集体行动几乎没有影响或有利的结果,而其他行动则成功地改变了当地或中央政府的政策或决定;其他人甚至推翻了政府。因此,施加强度指标以衡量某些集体行动产生的权力,压力,关注,担忧和影响。通过寿命函数定义和计算集体作用的强度,即它被定义为寿命函数(可行性或总参与)除以持续时间或跨度的总和。在模拟和大数据勘探下的强度分布方面存在一些规律性。峰值模型用于模拟在线集体动作,强度分布(n = 1000)接近正态分布;它指示由观察到的大数据情况(n = 159),它遵循Lognormal分布,这也适用于子组。强度引入铺平了预测在线集体行动的持续时间或跨度的方式。对于具有三个因素的组合预测(峰值的时序,峰值高度和活力),预测持续时间或跨度的精度接近模拟数据和观察到的大数据的100%。对于单个因素的单独预测,精度也更接近100%。 (c)2019 Elsevier B.v.保留所有权利。

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