Network embedding aims to learn the low-dimensional representations of vertexes in a network, while structure and inherent properties of the network is preserved. Existing network embedding works primarily focus on preserving the microscopic structure, such as the first- and second-order proximity of vertexes, while the macroscopic scale-free property is largely ignored. Scale-free property depicts the fact that vertex degrees follow a heavy-tailed distribution (i.e., only a few vertexes have high degrees) and is a critical property of real-world networks, such as social networks. In this paper, we study the problem of learning representations for scale-free networks. We first theoretically analyze the difficulty of embedding and reconstruc...
Network data analysis is a crucial method for mining complicated object interactions. In recent year...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network representation learning is a machine learning method that maps network topology and node inf...
Scale-free networks are a recently developed approach to modeling the interactions found in complex ...
A method for embedding graphs in Euclidean space is suggested. The method connects nodes to their ge...
A method for embedding graphs in Euclidean space is suggested. The method connects nodes to their ge...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
The node degrees of large real-world networks often follow a power-law distribution. Such scale-free...
Network data analysis is a crucial method for mining complicated object interactions. In recent year...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network representation learning is a machine learning method that maps network topology and node inf...
Scale-free networks are a recently developed approach to modeling the interactions found in complex ...
A method for embedding graphs in Euclidean space is suggested. The method connects nodes to their ge...
A method for embedding graphs in Euclidean space is suggested. The method connects nodes to their ge...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
The node degrees of large real-world networks often follow a power-law distribution. Such scale-free...
Network data analysis is a crucial method for mining complicated object interactions. In recent year...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...