Many real applications can be modeled using bipartite graphs, such as users vs. files in a P2P system, traders vs. stocks in a financial trading system, conferences vs. authors in a scientific publication network, and so on. We introduce two operations on bipartite graphs: 1) identifying similar nodes (relevance search), and 2) finding nodes connecting irrelevant nodes (anomaly detection). And we propose algorithms to compute the relevance score for each node using random walk with restarts and graph partitioning; we also propose algorithms to identify anomalies, using relevance scores. We evaluate the quality of relevance search based on semantics of the datasets, and we also measure the performance of the anomaly detection algorithm with ...
Bipartite graphs are widely used to model relationships between two types of entities. Community sea...
Abstract—When working with large-scale network data, the interconnected entities often have addition...
We develop graph-based methods for conditional anomaly detection and semi-supervised learning based ...
Many real applications can be modeled using bipartite graphs, such as users vs. files in a P2P syste...
Abstract—Bipartite graphs can model many real life appli-cations including users-rating-products in ...
Abstract Detecting anomalies in data is a vital task, with numerous high-impact ap-plications in are...
Anomaly detection is becoming an important problem in graph mining. This is because people are eager...
Anomaly detection is an area that has received much attention in recent years. It has a wide variety...
Knowledge discovery from disparate data sources can be very useful for gaining a better understandin...
Many social and economic systems can be represented as attributed networks encoding the relations be...
• Search engines crawl the Web on a regular ba-sis to create web graphs (∼100B vertices,∼1T edges). ...
Many social economic systems can be represented as attributed networks encoding the relations betwee...
Detecting anomalies in data is a vital task, with numerous high-impact applications in areas such as...
The ability to mine data represented as a graph has become important in several domains for detectin...
Abstract—Graphs are widely used to characterize relation-ships or information flows among entities i...
Bipartite graphs are widely used to model relationships between two types of entities. Community sea...
Abstract—When working with large-scale network data, the interconnected entities often have addition...
We develop graph-based methods for conditional anomaly detection and semi-supervised learning based ...
Many real applications can be modeled using bipartite graphs, such as users vs. files in a P2P syste...
Abstract—Bipartite graphs can model many real life appli-cations including users-rating-products in ...
Abstract Detecting anomalies in data is a vital task, with numerous high-impact ap-plications in are...
Anomaly detection is becoming an important problem in graph mining. This is because people are eager...
Anomaly detection is an area that has received much attention in recent years. It has a wide variety...
Knowledge discovery from disparate data sources can be very useful for gaining a better understandin...
Many social and economic systems can be represented as attributed networks encoding the relations be...
• Search engines crawl the Web on a regular ba-sis to create web graphs (∼100B vertices,∼1T edges). ...
Many social economic systems can be represented as attributed networks encoding the relations betwee...
Detecting anomalies in data is a vital task, with numerous high-impact applications in areas such as...
The ability to mine data represented as a graph has become important in several domains for detectin...
Abstract—Graphs are widely used to characterize relation-ships or information flows among entities i...
Bipartite graphs are widely used to model relationships between two types of entities. Community sea...
Abstract—When working with large-scale network data, the interconnected entities often have addition...
We develop graph-based methods for conditional anomaly detection and semi-supervised learning based ...