Revisiting Popularity Characterization and Modeling of User-Generated Videos

M. A. Islam, D. Eager, Niklas Carlsson, A. Mahanti
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引用次数: 7

Abstract

This paper presents new results on characterization and modeling of user-generated video popularity evolution, based on a recent complementary data collection for videos that were previously the subject of an eight month data collection campaign during 2008/09. In particular, during 2011, we collected two contiguous months of weekly view counts for videos in two separate 2008/09 datasets, namely the ``recently-uploaded'' and the ``keyword-search'' datasets. These datasets contain statistics for videos that were uploaded within 7 days of the start of data collection in 2008 and videos that were discovered using a keyword search algorithm in 2008, respectively. Our analysis shows that the average weekly view count for the recently-uploaded videos had not decreased by the time of the second measurement period, in comparison to the middle and later portions of the first measurement period. The new data is used to evaluate the accuracy of a previously proposed model for synthetic view count generation for time periods that are substantially longer than previously considered. We find that the model yielded distributions of total (lifetime) video view counts that match the empirical distributions, however, significant differences between the model and empirical data were observed with respect to other metrics. These differences appear to arise because of particular popularity characteristics that change over time rather than being week-invariant as assumed in the model.
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重新审视用户生成视频的流行特征和建模
本文介绍了用户生成视频流行度演变的表征和建模的新结果,基于最近对视频的补充数据收集,这些视频之前是2008/09年为期8个月的数据收集活动的主题。特别是在2011年,我们收集了2008/09年两个独立数据集(即“最近上传”和“关键字搜索”数据集)中连续两个月的每周视频观看次数。这些数据集分别包含2008年开始收集数据后7天内上传的视频和2008年使用关键字搜索算法发现的视频的统计数据。我们的分析表明,与第一次测量期间的中后期相比,最近上传的视频的平均每周观看次数在第二个测量期间并没有减少。新数据用于评估以前提出的模型的准确性,该模型用于合成视图计数生成的时间周期比以前考虑的要长得多。我们发现,该模型产生的总(生命周期)视频观看数的分布与经验分布相匹配,然而,在其他指标方面,模型和经验数据之间存在显著差异。这些差异似乎是由于特定的流行度特征随着时间的推移而变化,而不是像模型中假设的那样是周不变的。
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