Maximizing the spread of information through content optimization

Lei Lin , Yihua Du , Shibo Zhao , Wenkang Jiang , Qirui Tang , Li Xu
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引用次数: 0

Abstract

As data-driven prediction models advance, an increasing number of people are enjoying news personalized to their interests. The primary problem such recommendation models solve is to precisely match information with users and, in so doing, ensure that news spreads with greater efficiency. However, these techniques only help the media platform; they do not help those who produce the news. Hence, we devised a propagation framework based on a human-in-the-loop simulation that helps content authors maximize the spread of their messages through social networks. The framework works by acting on feedback provided by the simulation model. Additionally, the spread of information is formulated as a multi-objective optimization problem in which propagation is data-driven and simulated with machine learning techniques that leverage data on the historical behaviors of users. We additionally describe an implementation for this framework as an example of how the framework might be used in real life. On the practical side, the implementation uses text data from a blog to simulate the message's propagation, while, from a technical point of view, the multi-objective optimization problem is divided into an information retrieval problem and an integer programming problem, the results of which are fed back into the content editor as content operation strategies. A case study with the Sina Weibo microblog site not only validates the framework but also provides practitioners with insights into how to maximize the spread of information through social networking platforms. The results show that the proposed propagation framework is capable of increasing retweets by 7.9575 %. As an interesting aside, our experiments also show that the Weibo retweet lottery is both popular and a highly effective mechanism for increasing reposts.
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通过优化内容最大限度地传播信息
随着数据驱动的预测模型的发展,越来越多的人开始享受符合自己兴趣的个性化新闻。此类推荐模型解决的主要问题是将信息与用户进行精确匹配,从而确保新闻传播的效率更高。然而,这些技术只能帮助媒体平台,却无法帮助新闻生产者。因此,我们设计了一个基于 "人在回路中 "模拟的传播框架,帮助内容作者最大限度地通过社交网络传播信息。该框架根据仿真模型提供的反馈采取行动。此外,信息传播被表述为一个多目标优化问题,其中传播是由数据驱动的,并通过机器学习技术利用用户历史行为数据进行模拟。此外,我们还介绍了该框架的实现方法,以此为例说明如何在现实生活中使用该框架。在实际应用方面,该实现使用博客中的文本数据来模拟信息的传播,而从技术角度来看,多目标优化问题分为信息检索问题和整数编程问题,其结果作为内容操作策略反馈给内容编辑器。通过对新浪微博网站的案例研究,不仅验证了该框架,还为实践者提供了如何通过社交网络平台实现信息传播最大化的见解。结果表明,所提出的传播框架能够将转发量提高 7.9575%。有趣的是,我们的实验还表明,微博转发抽奖既受欢迎,又是一种非常有效的增加转发的机制。
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5.60
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