关注
Francois Theberge
Francois Theberge
Tutte Institute for Mathematics and Computing
在 IEEE.ORG 的电子邮件经过验证 - 首页
标题
引用次数
引用次数
年份
Clustering via hypergraph modularity
B Kamiński, V Poulin, P Prałat, P Szufel, F Théberge
PloS one 14 (11), e0224307, 2019
862019
Artificial benchmark for community detection (abcd)—fast random graph model with community structure
B Kamiński, P Prałat, F Théberge
Network Science 9 (2), 153-178, 2021
342021
Mining complex networks
B Kaminski, P Prałat, F Théberge
Chapman and Hall/CRC, 2021
332021
Almost all complete binary prefix codes have a self-synchronizing string
CF Freiling, DS Jungreis, F Théberge, K Zeger
IEEE Transactions on Information Theory 49 (9), 2219-2225, 2003
332003
Ensemble clustering for graphs
V Poulin, F Théberge
Complex Networks and Their Applications VII: Volume 1 Proceedings The 7th …, 2019
252019
Asymptotic estimates for blocking probabilities in a large multi-rate loss network
A Simonian, JW Roberts, F Theberge, R Mazumdar
Advances in Applied Probability 29 (3), 806-829, 1997
251997
Community detection algorithm using hypergraph modularity
B Kamiński, P Prałat, F Théberge
Complex Networks & Their Applications IX: Volume 1, Proceedings of the Ninth …, 2021
242021
An unsupervised framework for comparing graph embeddings
B Kamiński, P Prałat, F Théberge
Journal of Complex Networks 8 (5), cnz043, 2020
232020
Ensemble clustering for graphs: comparisons and applications
V Poulin, F Théberge
Applied Network Science 4 (1), 1-13, 2019
192019
Evaluating node embeddings of complex networks
A Dehghan-Kooshkghazi, B Kamiński, Ł Kraiński, P Prałat, F Théberge
Journal of Complex Networks 10 (4), cnac030, 2022
162022
Modularity of the ABCD random graph model with community structure
B Kamiński, B Pankratz, P Prałat, F Théberge
Journal of Complex Networks 10 (6), cnac050, 2022
152022
Properties and performance of the abcde random graph model with community structure
B Kamiński, T Olczak, B Pankratz, P Prałat, F Théberge
Big Data Research 30, 100348, 2022
122022
Approximation formulae for blocking probabilities in a large Erlang loss system: a probabilistic approach
F Theberge, RR Mazumdar
Proceedings of INFOCOM'95 2, 804-809, 1995
111995
Hypergraph Artificial Benchmark for Community Detection (h–ABCD)
B Kamiński, P Prałat, F Théberge
Journal of Complex Networks 11 (4), cnad028, 2023
102023
A scalable unsupervised framework for comparing graph embeddings
B Kamiński, P Prałat, F Théberge
Algorithms and Models for the Web Graph: 17th International Workshop, WAW …, 2020
92020
Providing QoS in large networks: Statistical multiplexing and admission control
NB Likhanov, RR Mazumdar, F Theberge
Analysis, Control and Optimization of Complex Dynamic Systems, 137-167, 2005
92005
A multi-purposed unsupervised framework for comparing embeddings of undirected and directed graphs
B Kamiński, Ł Kraiński, P Prałat, F Théberge
Network Science 10 (4), 323-346, 2022
72022
Outliers in the ABCD random graph model with community structure (ABCD+ O)
B Kamiński, P Prałat, F Théberge
International Conference on Complex Networks and Their Applications, 163-174, 2022
72022
New reduced load heuristic for computing blocking in large multirate loss networks
F Theberge, RR Mazumdar
IEE Proceedings-Communications 143 (4), 206-211, 1996
71996
Self-synchronization of Huffman codes
CF Freiling, DS Jungreis, F Théberge, K Zeger
IEEE International Symposium on Information Theory, 2003. Proceedings., 49, 2003
62003
系统目前无法执行此操作,请稍后再试。
文章 1–20