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Evaluating Network Embedding Models for Machine Learning Tasks

机译:评估机器学习任务的网络嵌入模型

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Network embedding is a representation learning paradigm that seeks to learn a compact low-dimensional distributed vector representation for each vertex in the network; this learned low-dimensional vector representation can thus be used for different machine learning tasks. Over the years, so many network embedding models have been worked upon based on several approaches. In this paper, we study vector embeddings of 10 different representation learning models, with the sole aim of carrying out two machine learning tasks on these learned representations - unsupervised community clustering and link prediction analysis. The goal is to compare the output of these tasks using the 10 models, and draw inference based on the obtained results. We analyze the results using 4 link prediction baseline heuristic measures for the link prediction analysis; and a combination of silhouette score analysis and dissimilarity metric index for the community analysis.
机译:网络嵌入是一种表示学习范例,旨在为网络中的每个顶点学习紧凑的低维分布式矢量表示。该学习的低维向量表示因此可以用于不同的机器学习任务。多年来,已经基于多种方法使用了许多网络嵌入模型。在本文中,我们研究了10种不同表示学习模型的向量嵌入,其唯一目的是对这些学习的表示执行两项机器学习任务-无监督社区聚类和链接预测分析。目标是使用10个模型比较这些任务的输出,并根据获得的结果进行推断。我们使用4种链接预测基准启发式方法对结果进行分析,以进行链接预测分析;并结合了剪影得分分析和相异性指标索引进行社区分析。

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