网络论坛网站上网络帖子受欢迎程度的预测模型

Yun-Jung Lee, In-Jun Jung, G. Woo
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引用次数: 1

摘要

如今,互联网用户可以通过YouTube等各种在线内容共享服务,轻松地制作数字内容并与他人分享。因此,很多门户网站都充斥着文字、视频等各种形式的用户创作内容(UCC)。估计UCC的流行程度对用户和站点管理员来说都是一个至关重要的问题。本文提出了一种利用网络内容本身的动态来预测网络文章(UCC)受欢迎程度的方法。为了分析其动态,我们将网络帖子的访问次数视为其受欢迎程度,并分析了访问次数的变化。我们推导了一个模型来预测一个帖子的受欢迎程度,该模型由访问次数的时间序列表示,它是基于指数函数的。实验结果显示,20532篇文章的实际访问数与预测访问数相差不超过10,约占测试集的90.7%。
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A Model to Predict Popularity of Internet Posts on Internet Forum Sites
Today, Internet users can easily create and share the digital contents with others through various online content sharing services such as YouTube. So, many portal sites are flooded with lots of user created contents (UCC) in various media such as texts and videos. Estimating popularity of UCC is a crucial concern to both users and the site administrators. This paper proposes a method to predict the popularity of Internet articles, a kind of UCC, using the dynamics of the online contents themselves. To analyze the dynamics, we regarded the access counts of Internet posts as the popularity of them and analyzed the variation of the access counts. We derived a model to predict the popularity of a post represented by the time series of access counts, which is based on an exponential function. According to the experimental results, the difference between the actual access counts and the predicted ones is not more than 10 for 20,532 posts, which cover about 90.7% of the test set.
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