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Titlebook: Broad Learning Through Fusions; An Application on So Jiawei Zhang,Philip S. Yu Textbook 2019 Springer Nature Switzerland AG 2019 data minin

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Unsupervised Network Alignmentving millions even billions of users also renders the training data labeling much more difficult. In this chapter, we will introduce several approaches to resolve the . problem based on the unsupervised learning setting instead, where no labeled training data will be needed in model building.
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Community Detectionnts, where the intra-community social connections are usually far more dense compared with the inter-community social connections. Meanwhile, from the mathematical representation perspective, due to these online social communities, the social network adjacency matrix tend to be not only sparse but also low-rank.
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Frontier and Future Directionsions and services. A number of state-of-the-art algorithms have been proposed to solve these problems, which are introduced in great detail in this book. . is a very promising research area, and several potential future development directions about broad learning will be illustrated in the following sections.
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Textbook 2019ment and knowledge discovery algorithms. Besides the overview of broad learning, machine learning and social network basics, specific topics covered in this book include network alignment, link prediction, community detection, information diffusion, viral marketing, and network embedding..
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Erklärungsmodell zum Netzwerkmarketingd in Chap. .. On the other hand, completely ignoring the (small) set of labeled anchor links, just like the . models introduced in Chap. ., may also create lots of problems, since these labeled anchor links can provide important signals for the network alignment model building.
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