Inferring Person-to-person Proximity Using WiFi SignalsGrowing Wikipedia Across Languages via Recommendationnode2vec: Scalable Feature Learning for NetworksDonor Retention in Online Crowdfunding Communities: A Case Study of DonorsChoose.orgMining Missing Hyperlinks from Human Navigation Traces: A Case Study of WikipediaAnalyzing Information Seeking and Drug-Safety Alert Response by Health Care Professionals as New Methods for SurveillanceThe mobilize center: an NIH big data to knowledge center to advance human movement research and improve mobilityWhy We Read WikipediaMining big data to extract patterns and predict real-life outcomes.Inferring Networks of Substitutable and Complementary ProductsSNAP: A General Purpose Network Analysis and Graph Mining Library.Large-scale physical activity data reveal worldwide activity inequality.Tensor Spectral Clustering for Partitioning Higher-order Network Structures.Network Lasso: Clustering and Optimization in Large Graphs.Ringo: Interactive Graph Analytics on Big-Memory Machines.Network analysis: a novel method for mapping neonatal acute transport patterns in California.Improving Website Hyperlink Structure Using Server LogsHigher-order organization of complex networks.Inductive Representation Learning on Large GraphsConfusions over Time: An Interpretable Bayesian Model to Characterize Trends in Decision MakingLarge-scale analysis of disease pathways in the human interactome.Predicting multicellular function through multi-layer tissue networks.Accurate Influenza Monitoring and Forecasting Using Novel Internet Data Streams: A Case Study in the Boston Metropolis.Representation Learning on Graphs: Methods and ApplicationsSnapVX: A Network-Based Convex Optimization Solver.Toeplitz Inverse Covariance-Based Clustering of Multivariate Time Series Data.HUMAN DECISIONS AND MACHINE PREDICTIONS.Local Higher-Order Graph Clustering.Network Inference via the Time-Varying Graphical Lasso.The Selective Labels Problem: Evaluating Algorithmic Predictions in the Presence of Unobservables.Prioritizing network communities.Modeling polypharmacy side effects with graph convolutional networks.Predicting positive and negative links in online social networksUncovering the structure and temporal dynamics of information propagationStructure and dynamics of information pathways in online mediaInferring Person-to-person Proximity Using WiFi SignalsHidden factors and hidden topicsNetwork enhancement as a general method to denoise weighted biological networksThe Battle of the Water Sensor Networks (BWSN): A Design Challenge for Engineers and AlgorithmsEmbedding Logical Queries on Knowledge Graphs
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Slovene computer scientist, Stanford University
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informaticus uit Slovenië
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slovensk datalog arbejdende på Stanford
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slovenski računalničar
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jurij Leskovec
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Jurij Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
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Jure Leskovec
@kl
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