Entreaty 发表于 2025-3-23 10:46:57
Craig T. January,Harry A. Fozzardin any one of these three areas can strongly benefit from the tools and techniques being developed in the others. We begin this book by outlining each of these three areas, their history and their relationship to one another. Subsequently, we outline the structure of this work and help the reader navigate its contents.女歌星 发表于 2025-3-23 16:31:33
Leonard J. Foster,Queenie W. T. Chanh group as separate entities. In this chapter, we use the tools of discrete calculus to examine both the . (i.e., finding a specific group) and the . (i.e., discovering all groups). We additionally show how to apply these clustering models to the clustering of higher-order cells, e.g., to cluster edges.行乞 发表于 2025-3-23 18:20:08
Elvira García Osuna,Robert F. Murphywe will discuss different techniques for generating a meaningful weighted complex from an embedding or from the data itself. Our focus will be primarily on generating weighted edges and faces from node and/or edge data, but we additionally demonstrate how these techniques may be applied to weighting higher-order structures.Keratin 发表于 2025-3-23 22:36:34
Building a Weighted Complex from Datawe will discuss different techniques for generating a meaningful weighted complex from an embedding or from the data itself. Our focus will be primarily on generating weighted edges and faces from node and/or edge data, but we additionally demonstrate how these techniques may be applied to weighting higher-order structures.补充 发表于 2025-3-24 04:20:46
Craig T. January,Harry A. Fozzardposure to the other two. The areas are: discrete calculus, complex networks, and algorithmic content extraction. Although there have been a few intersections in the literature between these areas, they have largely developed independently of one another. However, we believe that researchers working盟军 发表于 2025-3-24 07:26:29
Borivoj Korecky,Naranjan S. Dhalla forms. This generalization allows us to distill the important elements necessary to operate the basic machinery of conventional vector calculus. This basic machinery is then redefined in a discrete setting to produce appropriate definitions of the domain, boundary, functions, integrals, metric and引水渠 发表于 2025-3-24 14:23:30
Elvira García Osuna,Robert F. Murphys the central physical model for applying and understanding the concepts of discrete calculus on graphs for three reasons: because much of the progress in graph theory over the last century was created in the context of circuit theory; because of the early connection made between circuit theory andNebulous 发表于 2025-3-24 15:16:05
Elvira García Osuna,Robert F. Murphynd (e.g., road networks, social networks, communication networks, chemical graph theory or surface simplification). However, in many other applications the appropriate representation of the data to be analyzed is not provided (e.g., machine learning). Therefore, to use the tools of discrete calculuseuphoria 发表于 2025-3-24 21:08:20
https://doi.org/10.1007/978-1-4020-5943-8ation of noise from the signal becomes more possible when multiple data points are acquired which have a relationship with each other. A spatial relationship, such as the edge set of a graph, permits the use of the collective data acquisition to make better decisions about the true data underlying e坦白 发表于 2025-3-25 01:07:14
Leonard J. Foster,Queenie W. T. Chanssing. The clustering problem is also deeply connected to machine learning because a solution to the clustering problem may be used to propagate labels from observed data to unobserved data. In general network analysis, the identification of a grouping allows for the analysis of the nodes within eac