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Incorporating LDA with LSTM for followee recommendation on Twitter network

机译:在Twitter网络上使用LSTM并入LSTM的LDA

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Purpose - The purpose of this study is to facilitate the task of finding appropriate information to read about, and searching for people who are in the same field of interest Knowing that more people keep up with new streaming information on Twitter micro-blogging service. With the immense number of micro-posts shared via the follower/followee network graph, Twitter users find themselves in front of millions of tweets, which makes the task crucial. Design/methodology/approach - In this paper, a long short-term memory (LSTM) model that relies on the latent Dirichlet allocation (LDA) output vector for followee recommendation, the LDA model applied as a topic modeling strategy is proposed. Findings - This study trains the model using a real-life data set extracted based on Twitter follower/ followee architecture. It confirms the effectiveness and scalability of the proposed approach. The approach improves the state-of-the-art models average-LSTM and time-LSTM. Research limitations/implications - This study improves mainly the existing followee recommendation systems. Because, unlike previous studies, it applied a non-hand-crafted method which is the LSTM neural network with LDA model for topics extraction. The main limitation of this study is the cold-start users cannot be treated, also some active fake accounts may not be detected. Practical implications - The aim of this approach is to assist users seeking appropriate information to read about, by choosing appropriate profiles to follow. Social implications - This approach consolidates the social relationship between users in a microblogging platform by suggesting like-minded people to each other. Thus, finding users with the same interests will be easy without spending a lot of time seeking relevant users. Originality/value - Instead of classic recommendation models, the paper provides an efficient neural network searching method to make it easier to find appropriate users to follow. Therefore, affording an effective followee recommendation system.
机译:目的 - 本研究的目的是促进找到适当信息的任务,并在同一感兴趣领域寻找更多人们跟上关于Twitter Micro-Blogging服务的新流信息。通过通过追随者/粉丝网络图共享的巨大数量的微柱,Twitter用户在数百万推文中发现自己,这使得任务至关重要。设计/方法/方法 - 在本文中,提出了一种依赖于追随者推荐的潜在Dirichlet分配(LDA)输出向量的长短短期内存(LSTM)模型,作为主题建模策略所应用的LDA模型。调查结果 - 本研究使用基于Twitter跟随器/粉末架构提取的现实生活数据集来列举模型。它证实了所提出的方法的有效性和可扩展性。该方法改善了最先进的模型平均-LSTM和Time-LSTM。研究限制/影响 - 本研究主要提高了现有的介绍性推荐系统。因为,与之前的研究不同,它应用了一种非手工制作的方法,该方法是具有LDA模型的LSTM神经网络,用于主题提取。本研究的主要限制是无法治疗冷启动用户,也可能无法检测到一些主动假帐户。实际意义 - 这种方法的目的是通过选择要遵循的适当的简档来帮助用户寻求适当信息读取的信息。社会影响 - 这种方法通过互相建议志同道合的人来巩固微博平台中用户之间的社会关系。因此,在没有花费大量时间寻求相关用户的情况下,以相同的利益寻找用户将很容易。原创性/值 - 而不是经典推荐模型,提供了一个有效的神经网络搜索方法,使得更容易找到适当的用户遵循。因此,提供了有效的介绍性推荐系统。

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