Constructing Disease Network and Temporal Progression Model via Context-Sensitive Hawkes Process
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Le Song | Jimeng Sun | Robert Chen | Nan Du | Edward Choi | Le Song | Jimeng Sun | E. Choi | Nan Du | Robert Chen
[1] A. Hawkes,et al. A cluster process representation of a self-exciting process , 1974, Journal of Applied Probability.
[2] S. Pauker,et al. The Markov Process in Medical Prognosis , 1983, Medical decision making : an international journal of the Society for Medical Decision Making.
[3] R. Chapman,et al. Association of primary sclerosing cholangitis with HLA-B8. , 1983, Gut.
[4] S. Kernis,et al. The incidence, predictors, and outcomes of early reinfarction after primary angioplasty for acute myocardial infarction. , 2003, Journal of the American College of Cardiology.
[5] E. Goljan. Rapid Review Pathology , 2004 .
[6] T. Karlsen,et al. Different HLA class II associations in ulcerative colitis patients with and without primary sclerosing cholangitis , 2007, Genes and Immunity.
[7] J. McMurray,et al. Heart failure after acute myocardial infarction: a lost battle in the war on heart failure? , 2008, Circulation.
[8] Wayne H. Ward,et al. Towards Temporal Relation Discovery from the Clinical Narrative , 2009, AMIA.
[9] Kaori Ito,et al. Disease progression meta-analysis model in Alzheimer's disease , 2010, Alzheimer's & Dementia.
[10] Jure Leskovec,et al. On the Convexity of Latent Social Network Inference , 2010, NIPS.
[11] J. Leiva-Murillo,et al. Visualization and Prediction of Disease Interactions with Continuous-Time Hidden Markov Models , 2011 .
[12] T. H. Kyaw,et al. Multiparameter Intelligent Monitoring in Intensive Care II: A public-access intensive care unit database* , 2011, Critical care medicine.
[13] Bernhard Schölkopf,et al. Uncovering the Temporal Dynamics of Diffusion Networks , 2011, ICML.
[14] N. Tangri,et al. A predictive model for progression of chronic kidney disease to kidney failure. , 2011, JAMA.
[15] N. Gronich,et al. Higher risk of venous thrombosis associated with drospirenone-containing oral contraceptives: a population-based cohort study , 2011, Canadian Medical Association Journal.
[16] M. Goldstein. The MassGeneral Hospital for Children adolescent medicine handbook , 2011 .
[17] M. Saeed. Multiparameter Intelligent Monitoring in Intensive Care II ( MIMIC-II ) : A public-access intensive care unit database , 2011 .
[18] A. Stomakhin,et al. Reconstruction of missing data in social networks based on temporal patterns of interactions , 2011 .
[19] Kazuo Yano,et al. Self-exciting point process modeling of conversation event sequences , 2012, ArXiv.
[20] Stefano Ermon,et al. Feature-Enhanced Probabilistic Models for Diffusion Network Inference , 2012, ECML/PKDD.
[21] Visakan Kadirkamanathan,et al. Point process modelling of the Afghan War Diary , 2012, Proceedings of the National Academy of Sciences.
[22] Le Song,et al. Learning Networks of Heterogeneous Influence , 2012, NIPS.
[23] Jiayu Zhou,et al. Modeling disease progression via fused sparse group lasso , 2012, KDD.
[24] Gentry White,et al. Self-exciting hurdle models for terrorist activity , 2012, 1203.3680.
[25] Jure Leskovec,et al. Inferring networks of diffusion and influence , 2010, KDD.
[26] James M. Rehg,et al. Longitudinal Modeling of Glaucoma Progression Using 2-Dimensional Continuous-Time Hidden Markov Model , 2013, MICCAI.
[27] Peter F. Halpin,et al. Modelling Dyadic Interaction with Hawkes Processes , 2013, Psychometrika.
[28] George Mohler,et al. Modeling and estimation of multi-source clustering in crime and security data , 2013, 1311.7279.
[29] Shuang-Hong Yang,et al. Mixture of Mutually Exciting Processes for Viral Diffusion , 2013, ICML.
[30] Le Song,et al. Uncover Topic-Sensitive Information Diffusion Networks , 2013, AISTATS.
[31] Jimeng Sun,et al. Marble: high-throughput phenotyping from electronic health records via sparse nonnegative tensor factorization , 2014, KDD.
[32] Yinan Zhao. Mining Medical Records with a KLIPI Multi-Dimensional Hawkes Model , 2014 .
[33] Le Song,et al. Shaping Social Activity by Incentivizing Users , 2014, NIPS.
[34] Joydeep Ghosh,et al. LUDIA: an aggregate-constrained low-rank reconstruction algorithm to leverage publicly released health data , 2014, KDD.
[35] Fei Wang,et al. From micro to macro: data driven phenotyping by densification of longitudinal electronic medical records , 2014, KDD.
[36] Ping Zhang,et al. Clinical risk prediction with multilinear sparse logistic regression , 2014, KDD.
[37] Ramesh Sharda,et al. Modeling brand post popularity dynamics in online social networks , 2014, Decis. Support Syst..
[38] Andrew B. Whinston,et al. Path to Purchase: A Mutually Exciting Point Process Model for Online Advertising and Conversion , 2012, Manag. Sci..
[39] Anna Rumshisky,et al. Unfolding physiological state: mortality modelling in intensive care units , 2014, KDD.
[40] Xiang Wang,et al. Unsupervised learning of disease progression models , 2014, KDD.
[41] Lucila Ohno-Machado,et al. NIH's Big Data to Knowledge initiative and the advancement of biomedical informatics , 2014, J. Am. Medical Informatics Assoc..