Title:
Modeling, predicting, and guiding users' temporal behaviors

dc.contributor.advisor Song, Le
dc.contributor.author Wang, Yichen
dc.contributor.committeeMember Zha, Hongyuan
dc.contributor.committeeMember Davenport, Mark
dc.contributor.committeeMember Ye, Xiaojing
dc.contributor.committeeMember Zhou, Haomin
dc.contributor.department Mathematics
dc.date.accessioned 2018-08-20T15:35:00Z
dc.date.available 2018-08-20T15:35:00Z
dc.date.created 2018-08
dc.date.issued 2018-05-11
dc.date.submitted August 2018
dc.date.updated 2018-08-20T15:35:00Z
dc.description.abstract The increasing availability and granularity of temporal event data produced from user activities in online media, social networks and health informatics provide new opportunities and challenges to model and understand user behaviors. In addition to studying the macroscopic patterns on the population level, such type of data further enable us to investigate user interactions in a more fine-grained scale to address the "who will do what by when?" question with new exploratory and predictive models. On the other hand, these myriads of microscopic event data, such as publishing a post, forwarding a tweet, purchasing a product, checking in a place, often arise asynchronously and interdependently; hence they require new representing and analyzing methods far beyond those based on independent and identically distributed data models. In this dissertation, I present a novel probabilistic framework for modeling, learning, predicting, and guiding users’ temporal behaviors. Within the proposed framework, we introduce a pipeline of newly developed statistical models, state-of-the-arts learning algorithms to tackle several canonical problems in theory and practice, including: (1) provable nonparametric learning of temporal point processes, (2) a generic embedding framework for continuous-time evolving graphs, (3) scalable algorithms for predicting user activity levels, and (4) a stochastic differential equation framework for guiding users’ activities.
dc.description.degree Ph.D.
dc.format.mimetype application/pdf
dc.identifier.uri http://hdl.handle.net/1853/60208
dc.language.iso en_US
dc.publisher Georgia Institute of Technology
dc.subject Point processes
dc.subject Hawkes processes
dc.subject Survival analysis
dc.subject Low-rank models
dc.subject Mass transport
dc.subject Fokker Planck equation
dc.subject Stochastic optimal control
dc.subject Reinforcement learning
dc.subject Social network analysis
dc.subject Information diffusion
dc.subject Recommendation systems
dc.title Modeling, predicting, and guiding users' temporal behaviors
dc.type Text
dc.type.genre Dissertation
dspace.entity.type Publication
local.contributor.advisor Song, Le
local.contributor.corporatename College of Sciences
local.contributor.corporatename School of Mathematics
relation.isAdvisorOfPublication b279cef1-4f3d-40b1-852c-1ccfe5fbbd26
relation.isOrgUnitOfPublication 85042be6-2d68-4e07-b384-e1f908fae48a
relation.isOrgUnitOfPublication 84e5d930-8c17-4e24-96cc-63f5ab63da69
thesis.degree.level Doctoral
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