. Bibliographie,

A. Lada, E. Adamic, and . Adar, Friends and neighbors on the web, Social networks, vol.25, issue.3, pp.211-230, 2003.

M. Edoardo, . Airoldi, M. David, S. E. Blei, E. P. Fienberg et al., Mixed membership stochastic block models for relational data with application to protein-protein interactions, Proceedings of the international biometrics society annual meeting, vol.15, 2006.

A. Sylvain-arlot and . Celisse, A survey of cross-validation procedures for model selection, Statistics surveys, vol.4, pp.40-79, 2010.

V. Mohammad-al-hasan, S. Chaoji, M. Salem, and . Zaki, Link prediction using supervised learning, SDM06 : workshop on link analysis, counter-terrorism and security, 2006.

A. Mohammad, M. J. Hasan, and . Zaki, A survey of link prediction in social networks, Social network data analytics, pp.243-275, 2011.

M. Lorenzo-bracciale, P. Bonola, G. Loreti, R. Bianchi, A. Amici et al., CRAWDAD dataset roma/taxi, 2014.

A. Catherine, . Bliss, R. Morgan, . Frank, M. Christopher et al., An evolutionary algorithm approach to link prediction in dynamic social networks, Journal of Computational Science, vol.5, issue.5, pp.750-764, 2014.

E. P. George, . Box, M. Gwilym, . Jenkins, C. Gregory et al., Time series analysis : forecasting and control, 2015.

L. Backstrom and J. Leskovec, Supervised random walks : predicting and recommending links in social networks, Proceedings of the fourth ACM international conference on Web search and data mining, pp.635-644, 2011.

V. Batagelj and S. Praprotnik, An algebraic approach to temporal network analysis based on temporal quantities, Social Network Analysis and Mining, vol.6, issue.1, p.28, 2016.

C. Vittorio-cannistraci, G. Alanis-lobato, and T. Ravasi, From link-prediction in brain connectomes and protein interactomes to the local-community-paradigm in complex networks, Scientific reports, vol.3, p.1613, 2013.

A. Casteigts, P. Flocchini, W. Quattrociocchi, and N. Santoro, Time-varying graphs and dynamic networks, International Journal of Parallel, Emergent and Distributed Systems, vol.27, issue.5, pp.387-408, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00854287

C. Chatfield, Time-series forecasting, 2000.

A. Clauset, C. Moore, . Mark, and . Newman, Hierarchical structure and the prediction of missing links in networks, Nature, vol.453, issue.7191, pp.98-101, 2008.

T. G. Daniel-m-dunlavy, E. Kolda, and . Acar, Temporal link prediction using matrix and tensor factorizations, ACM Transactions on Knowledge Discovery from Data (TKDD), vol.5, issue.2, p.10, 2011.

M. Dash and H. Liu, Feature selection for classification. Intelligent data analysis, vol.1, pp.131-156, 1997.

D. Davis, R. Lichtenwalter, and N. Chawla, Supervised methods for multi-relational link prediction. Social network analysis and mining, vol.3, pp.127-141, 2013.

P. Ricardo-da, S. Soares, and R. Prudêncio, Time series based link prediction, The 2012 International Joint Conference on, pp.1-7, 2012.

. Dtw-+-12]-yuxiao, J. Dong, S. Tang, J. Wu, . Tian et al., Link prediction and recommendation across heterogeneous social networks, Data mining (ICDM), 2012 IEEE 12th international conference on, pp.181-190, 2012.

N. Eagle and A. , CRAWDAD dataset mit/reality, 2005.

I. Guyon and A. Elisseeff, An introduction to variable and feature selection, Journal of machine learning research, vol.3, pp.1157-1182, 2003.

X. Gao, B. Xiao, D. Tao, and X. Li, A survey of graph edit distance. Pattern Analysis and applications, vol.13, pp.113-129, 2010.

Z. Huang, K. J. Dennis, and . Lin, The time-series link prediction problem with applications in communication surveillance, INFORMS Journal on Computing, vol.21, issue.2, pp.286-303, 2009.

Z. Huang, X. Li, and H. Chen, Link prediction approach to collaborative filtering, Proceedings of the 5th ACM/IEEE-CS joint conference on Digital libraries, pp.141-142, 2005.

P. Holme, Modern temporal network theory : a colloquium. The European, Physical Journal B, vol.88, issue.9, p.234, 2015.

P. Holme and J. Saramäki, Temporal networks, Physics reports, vol.519, issue.3, pp.97-125, 2012.

T. Hossmann, T. Spyropoulos, and F. Legendre, Know thy neighbor : Towards optimal mapping of contacts to social graphs for dtn routing, INFOCOM, 2010 Proceedings IEEE, pp.1-9, 2010.

P. Jaccard, Etude comparative de la distribution florale dans une portion des Alpes et du Jura, Impr. Corbaz, 1901.

R. Kohavi, A study of cross-validation and bootstrap for accuracy estimation and model selection, Ijcai, vol.14, pp.1137-1145, 1995.

S. Katz, Geographical proximity and scientific collaboration, Scientometrics, vol.31, issue.1, pp.31-43, 1994.

M. Kim and J. Leskovec, The network completion problem : Inferring missing nodes and edges in networks, Proceedings of the 2011 SIAM International Conference on Data Mining, pp.47-58, 2011.

G. Kossinets, J. Duncan, and . Watts, Empirical analysis of an evolving social network. science, vol.311, pp.88-90, 2006.

. Ant-lab,

J. Leskovec, L. Backstrom, R. Kumar, and A. Tomkins, Microscopic evolution of social networks, Proceedings of the 14th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.462-470, 2008.

N. Ryan, J. T. Lichtenwalter, N. Lussier, and . Chawla, New perspectives and methods in link prediction, Proceedings of the 16th ACM SIGKDD international conference on Knowledge discovery and data mining, pp.243-252, 2010.

D. Liben, -. Nowell, and J. Kleinberg, The link-prediction problem for social networks, Journal of the American society for information science and technology, vol.58, issue.7, pp.1019-1031, 2007.

G. Linden, B. Smith, and J. York, Amazon. com recommendations : Item-to-item collaborative filtering, IEEE Internet computing, vol.7, issue.1, pp.76-80, 2003.

M. Latapy, T. Viard, and C. Magnien, Stream graphs and link streams for the modeling of interactions over time, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01665084

M. Latapy, T. Viard, and C. Magnien, Stream graphs and link streams for the modeling of interactions over time, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01665084

L. Lü and T. Zhou, Link prediction in complex networks : A survey, Physica A : Statistical Mechanics and its Applications, vol.390, issue.6, pp.1150-1170, 2011.

R. Mastrandrea, J. Fournet, and A. Barrat, Contact patterns in a high school : a comparison between data collected using wearable sensors, contact diaries and friendship surveys, PloS one, vol.10, issue.9, p.136497, 2015.
URL : https://hal.archives-ouvertes.fr/hal-01238308

T. Murata and S. Moriyasu, Link prediction of social networks based on weighted proximity measures, Proceedings of the IEEE/-WIC/ACM international conference on web intelligence, pp.85-88, 2007.

R. Law-michalski, S. Palus, and P. Law-kazienko, Matching organizational structure and social network extracted from email communication, Lecture Notes in Business Information Processing, vol.87, pp.197-206, 2011.

J. Joshua-o'madadhain, P. Hutchins, and . Smyth, Prediction and ranking algorithms for event-based network data, ACM SIGKDD explorations newsletter, vol.7, pp.23-30, 2005.

G. Palshikar, Simple algorithms for peak detection in time-series, Proc. 1st Int. Conf. Advanced Data Analysis, pp.1-13, 2009.

N. Perra, B. Gonçalves, R. Pastor-satorras, and A. Vespignani, Activity driven modeling of time varying networks, Scientific reports, vol.2, p.469, 2012.

M. Pujari and R. Kanawati, Supervised rank aggregation approach for link prediction in complex networks, Proceedings of the 21st International Conference on World Wide Web, pp.1189-1196, 2012.

A. Popescul, H. Lyle, and . Ungar, Statistical relational learning for link prediction, IJCAI workshop on learning statistical models from relational data, 2003.

T. Raeder, O. Lizardo, D. Hachen, and N. Chawla, Predictors of short-term decay of cell phone contacts in a large scale communication network, Social Networks, vol.33, issue.4, pp.245-257, 2011.

T. +-18]-mahmudur-rahman, M. A. Saha, K. S. Hasan, C. Xu, and . Reddy, Dylink2vec : Effective feature representation for link prediction in dynamic networks, 2018.

C. Scholz, M. Atzmueller, and G. Stumme, On the predictability of human contacts : Influence factors and the strength of stronger ties, Privacy, Security, Risk and Trust (PASSAT), 2012 International Conference on and 2012 International Confernece on Social Computing, pp.312-321, 2012.

J. Stehlé, A. Barrat, and G. Bianconi, Dynamical and bursty interactions in social networks, Physical review E, vol.81, issue.3, p.35101, 2010.

. Sgc-+-09]-james, R. Scott, J. Gass, P. Crowcroft, C. Hui et al., CRAWDAD dataset cambridge/haggle (v, 2009.

S. Soundarajan and J. Hopcroft, Using community information to improve the precision of link prediction methods, Proceedings of the 21st International Conference on World Wide Web, pp.607-608, 2012.

R. Robert and . Sokal, A statistical method for evaluating systematic relationship. University of Kansas science bulletin, vol.28, pp.1409-1438, 1958.

T. Sørensen, A method of establishing groups of equal amplitude in plant sociology based on similarity of species and its application to analyses of the vegetation on danish commons, Biol. Skr, vol.5, pp.1-34, 1948.

T. Tylenda, R. Angelova, and S. Bedathur, Towards timeaware link prediction in evolving social networks, Proceedings of the 3rd workshop on social network mining and analysis, p.9, 2009.

L. Tabourier, A. Libert, and R. Lambiotte, Rankmerging : Learning to rank in large-scale social networks, DyNakII, 2nd International Workshop on Dynamic Networks and Knowledge Discovery (PKDD 2014 workshop), 2014.
URL : https://hal.archives-ouvertes.fr/hal-01208510

L. Tabourier, A. Libert, and R. Lambiotte, Predicting links in ego-networks using temporal information, EPJ Data Science, vol.5, issue.1, p.1, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01253822

T. Viard, R. Fournier-s'niehotta, C. Magnien, and M. Latapy, Discovering patterns of interest in ip traffic using cliques in bipartite link streams, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01665089

T. Viard and M. Latapy, Identifying roles in an ip network with temporal and structural density, Conference on Computer Communications Workshops (INFOCOM WKSHPS), pp.801-806, 2014.
URL : https://hal.archives-ouvertes.fr/hal-01009382

D. Jonathan, . Victor, P. Keith, and . Purpura, Nature and precision of temporal coding in visual cortex : a metric-space analysis, Journal of neurophysiology, vol.76, issue.2, pp.1310-1326, 1996.

P. Wang, B. Xu, Y. Wu, and X. Zhou, Link prediction in social networks : the state-of-the-art, Science China Information Sciences, vol.58, issue.1, pp.1-38, 2015.

R. Xiang, J. Neville, and M. Rogati, Modeling relationship strength in online social networks, Proceedings of the 19th international conference on World wide web, pp.981-990, 2010.

T. Zhou, L. Lü, and Y. Zhang, Predicting missing links via local information, The European Physical Journal B, vol.71, issue.4, pp.623-630, 2009.