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A Multidimensional Nonnegative Matrix Factorization Model for Retweeting Behavior Prediction

机译:转发行为预测的多维非负矩阵分解模型

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摘要

Today microblogging has increasingly become a means of information diffusion via user’s retweeting behavior. As a consequence, exploring on retweeting behavior is a better way to understand microblog’s transmissibility in the network. Hence, targeted at online microblogging, a directed social network, along with user-based features, this paper first built content-based features, which consisted of URL, hashtag, emotion difference, and interest similarity, based on time series of text information that user posts. And then we measure relationship-based factor in social network according to frequency of interactions and network structure which blend with temporal information. Finally, we utilize nonnegative matrix factorization to predict user’s retweeting behavior from user-based dimension and content-based dimension, respectively, by employing strength of social relationship to constrain objective function. The results suggest that our proposed method effectively increases retweeting behavior prediction accuracy and provides a new train of thought for retweeting behavior prediction in dynamic social networks.
机译:今天微博越来越多地成为通过用户的转发行为扩散的信息。因此,转发行为的探索是了解网络中的微博传递的更好方法。因此,针对在线微博,一个定向的社交网络,以及基于用户的特征,本文首先建立了基于内容的特征,包括基于时间序列的基于URL,HASHTAG,情感差异和利益相似性。用户帖子。然后,我们根据与时间信息混合的交互和网络结构的频率测量社交网络中基于关系的因素。最后,我们利用非负矩阵分解,通过采用社会关系强度来限制目标函数来预测来自基于用户的维度和基于内容的维度的用户的转发行为。结果表明,我们的提出方法有效地提高了转发行为预测准确性,并为动态社交网络中的转发行为预测提供了新的思路。

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