Link prediction is the task of evaluating the probability that an edge exists in a network, and it has useful applications in many domains. Traditional approaches rely on measuring the similarity between two nodes in a static context. Recent research has focused on extending link prediction to a dynamic setting, predicting the creation and destruction of links in networks that evolve over time. Though a difficult task, the employment of deep learning techniques have shown to make notable improvements to the accuracy of predictions. To this end, we propose the novel application of weak estimators in addition to the utilization of traditional similarity metrics to inexpensively build an effective feature vector for a deep neural network. Weak...
In a social network there can be many different kind of links or edges between the nodes. Those coul...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
Thesis (Ph.D.), School of Electrical Engineering and Computer Science, Washington State UniversityLi...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
In recent years, endless link prediction algorithms based on network representation learning have em...
Plenty of algorithms for link prediction have been proposed and were applied to various real network...
Link prediction aims to uncover the underlying relationship behind networks, which could be utilize...
Link prediction in complex networks has attracted increasing attention. The link prediction algorith...
Abstract — Link prediction is an important network science problem in many domains such as social ne...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
Social networks can be helpful for the analysis of behaviour of people. An existing social network i...
Deep Learning has been used extensively in many applications by researchers. With the increased attr...
Link Prediction is an area of great interest in social network analy- sis. Previous works in the are...
Deep learning has been successful in various domains including image recognition, speech recognition...
In a social network there can be many different kind of links or edges between the nodes. Those coul...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
Link prediction based on bipartite networks can not only mine hidden relationships between different...
Thesis (Ph.D.), School of Electrical Engineering and Computer Science, Washington State UniversityLi...
n recent years, link prediction has been applied to a wide range of real-world applications which of...
In recent years, endless link prediction algorithms based on network representation learning have em...
Plenty of algorithms for link prediction have been proposed and were applied to various real network...
Link prediction aims to uncover the underlying relationship behind networks, which could be utilize...
Link prediction in complex networks has attracted increasing attention. The link prediction algorith...
Abstract — Link prediction is an important network science problem in many domains such as social ne...
Link Prediction in Human Complex Networks aims to predict the missing, deleted, or future link forma...
Social networks can be helpful for the analysis of behaviour of people. An existing social network i...
Deep Learning has been used extensively in many applications by researchers. With the increased attr...
Link Prediction is an area of great interest in social network analy- sis. Previous works in the are...
Deep learning has been successful in various domains including image recognition, speech recognition...
In a social network there can be many different kind of links or edges between the nodes. Those coul...
The analysis of social networks has attracted a lot of attention during the last two decades. These ...
Link prediction based on bipartite networks can not only mine hidden relationships between different...