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Timing Tweets to Increase Effectiveness of Information Campaigns

机译:时间推文增加信息活动的有效性

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Microblogging websites such as Twitter are increasingly being used by businesses/campaigners for timely dissemination of information to their followers. The diffusion of a tweet depends on several factors: the activity of the follower nodes, the responsiveness of follower nodes to tweets from the source node, the out-degree of the follower nodes, the content of recent related tweets seen by the follower node, etc. Using such factors, in this paper, we propose a framework to measure the effectiveness of an information campaign over Twitter. We consider a positive as well as a negative metric to measure the impact of a tweet: while retweets are used to measure the positive impact, the lack of a timely response from an active follower node is taken as a potential negative impact. We investigate the scheduling of tweets to increase the net positive impact while keeping the net negative impact below a desired level. We propose and study several scheduling algorithms by casting the problem in a Markov Decision Process (MDP) framework. In order to compare our algorithms, we estimate the model parameters from tweet data collected using the Twitter API from an arbitrarily selected node and its 6837 followers over several months. For this dataset, we find that if successive tweets in the campaign are novel, then substantial gains over user activity based scheduling can be obtained by scheduling tweets in time slots where the ratio of the expected positive and negative metrics is high. We call this the MaxRatio policy and we show that it is optimal under certain conditions. In cases where we are not certain about the response of users to successive related tweets, we identify another algorithm (which we call MaxReach) as a robust alternative.
机译:商业/广告系列越来越多地使用微博网站,以便及时向其追随者传播信息。推文的传播取决于若干因素:从动节点的活动,从动节点到源节点推文的响应性,从而来的跟随节点的out度,从而来,跟随者节点看到的最近相关推文的内容,在本文中,使用此类因素,提出了一个框架来衡量信息运动的有效性。我们考虑一个积极的和负数标准来衡量推文的影响:虽然使用转扬来测量积极影响,但从有源跟随节点缺乏及时响应被视为潜在的负面影响。我们调查推文的调度,以增加净积极影响,同时保持净负面影响低于所需水平。我们提出并研究了通过在马尔可夫决策过程(MDP)框架中的问题施放问题的若干调度算法。为了比较我们的算法,我们估计来自使用Twitter API从任意选择的节点收集的推文数据以及其6837粉丝超过几个月的算法。对于此数据集,我们发现,如果广告系列中的连续推文是新颖的,则可以通过在时间槽中调度基于用户活动的调度来实现大量的增益,其中预期的正和负度量的比率高。我们称之为Maxratio策略,我们表明它在某些条件下是最佳的。在我们不确定用户对连续相关推文的响应的情况下,我们将另一种算法(将MaxReach)标识为强大的替代方案。

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