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Content Sharing Prediction for Device-to-Device (D2D)-based Offline Mobile Social Networks by Network Representation Learning

机译:通过网络表示学习对设备到设备(D2D)的内容共享预测 - 基于脱机移动社交网络

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With the explosion of cellular data, the content sharing in proximity among offline Mobile Social Networks (MSNs) has received significant attention. It is necessary to understand the face-to-face (e.g. Device-to-Device, D2D) social network structure and to predict content propagation precisely, which can be conducted by learning the low-dimensional embedding of the network nodes, called Network Representation Learning (NRL). However, most existing NRL models consider each edge as a binary or continuous value, neglecting rich information between nodes. Besides, many traditional models are almost based on small-scale datasets or online Internet services, severely confining their applications in D2D scenarios. Therefore, we propose ResNel, a RESCAL-based network representation learning model, which aims to regard the multi-dimensional relations as a probability in third-order (3D) tensor space and achieve more accurate predictions for both discovered and undiscovered relations in the D2D social network. Specifically, we consider the Global Positioning System (GPS) information as a critical relation slice to avoid the loss of potential information. Experiments on a realistic large-scale D2D dataset corroborate the advantages of improving forecast accuracy.
机译:随着蜂窝数据的爆炸,离线移动社交网络(MSNS)附近的内容共享已受到重大关注。有必要了解面对面(例如设备到设备,D2D)社交网络结构,并精确地预测内容传播,这可以通过学习网络节点的低维嵌入,称为网络表示学习(NRL)。但是,大多数现有的NRL模型将每个边缘视为二进制或连续值,忽略节点之间的丰富信息。此外,许多传统模型几乎基于小规模数据集或在线上网服务,严重限制了D2D场景中的应用程序。因此,我们提出了一种基于RESCAL的网络表示学习模型的催化,其旨在将多维关系视为三阶(3D)张量空间的概率,并实现D2D中发现和未被发现的关系的更准确的预测社交网络。具体地,我们认为全球定位系统(GPS)信息作为关键关系切片,以避免潜在信息的丢失。实际大规模D2D数据集的实验证实了提高预测精度的优势。

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