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BL-MNE: Emerging Heterogeneous Social Network Embedding Through Broad Learning with Aligned Autoencoder

机译:BL-MNE:通过广泛的学习和对齐的自动编码器嵌入新兴的异构社交网络

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Network embedding aims at projecting the network data into a low-dimensional feature space, where the nodes are represented as a unique feature vector and network structure can be effectively preserved. In recent years, more and more online application service sites can be represented as massive and complex networks, which are extremely challenging for traditional machine learning algorithms to deal with. Effective embedding of the complex network data into low-dimension feature representation can both save data storage space and enable traditional machine learning algorithms applicable to handle the network data. Network embedding performance will degrade greatly if the networks are of a sparse structure, like the emerging networks with few connections. In this paper, we propose to learn the embedding representation for a target emerging network based on the broad learning setting, where the emerging network is aligned with other external mature networks at the same time. To solve the problem, a new embedding framework, namely "Deep alIgned autoencoder based eMbEdding" (DIME), is introduced in this paper. DIME handles the diverse link and attribute in a unified analytic based on broad learning, and introduces the multiple aligned attributed heterogeneous social network concept to model the network structure. A set of meta paths are introduced in the paper, which define various kinds of connections among users via the heterogeneous link and attribute information. The closeness among users in the networks are defined as the meta proximity scores, which will be fed into DIME to learn the embedding vectors of users in the emerging network. Extensive experiments have been done on real-world aligned social networks, which have demonstrated the effectiveness of DIME in learning the emerging network embedding vectors.
机译:网络嵌入旨在将网络数据投影到低维特征空间中,在该空间中,节点被表示为唯一的特征向量,并且可以有效地保留网络结构。近年来,越来越多的在线应用程序服务站点可以表示为庞大而复杂的网络,这对传统的机器学习算法来说是极具挑战性的。有效地将复杂的网络数据嵌入到低维特征表示中,既可以节省数据存储空间,又可以启用适用于处理网络数据的传统机器学习算法。如果网络结构稀疏(例如新兴的网络连接少),则网络嵌入性能将大大降低。在本文中,我们建议基于广泛的学习环境来学习目标新兴网络的嵌入表示,其中新兴网络与其他外部成熟网络同时对齐。为了解决这个问题,本文介绍了一种新的嵌入框架,即“基于深度自动编码器的eMbEdding”(DIME)。 DIME在广泛学习的基础上,通过统一的分析方法来处理各种链接和属性,并引入多重对齐的属性异构社交网络概念来对网络结构进行建模。本文介绍了一组元路径,这些元路径通过异构链接和属性信息定义了用户之间的各种连接。网络中用户之间的亲近度定义为元接近度得分,该分数将被馈入DIME,以了解新兴网络中用户的嵌入向量。已经在现实世界中对齐的社交网络上进行了广泛的实验,这些实验证明了DIME在学习新兴网络嵌入向量方面的有效性。

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