Fazel, MaryamRaut, Prasanna Sanjay2021-03-192021-03-192021-03-192020Raut_washington_0250O_22288.pdfhttp://hdl.handle.net/1773/46846Thesis (Master's)--University of Washington, 2020In this thesis, we consider online continuous DR-submodular maximization with linear stochastic long-term constraints. Compared to the prior work on online submodular maximization \cite{chenOnlineContinuousSubmodular2018}, our setting introduces the extra complication of stochastic linear constraint functions generated at each round and are independent and identically distributed (i.i.d). To be precise, at step $t\in\{1,\dots,T\}$, a DR-submodular utility function $f_t(\cdot)$ and a constraint vector $p_t$, i.i.d. generated from an unknown distribution with mean $p$, are revealed after committing to an action $x_t$ and we aim to maximize the overall utility while the expected cumulative resource consumption $\sum_{t=1}^T \langle p,x_t\rangle$ is below a fixed budget $B_T$. Stochastic long-term constraints arise naturally in applications where there is a limited budget or resource available and resource consumption at each step is governed by stochastically time-varying environments. We propose the Online Lagrangian Frank-Wolfe (OLFW) algorithm to solve this class of online problems. We analyze the performance of the OLFW algorithm and we obtain sub-linear regret bounds as well as sub-linear cumulative constraint violation bounds, both in expectation and with high probability.application/pdfen-USCC BYregret analysisnon-convex optimizationonline optimizationsubmodular maximizationApplied mathematicsComputer scienceOperations researchMechanical engineeringOnline Decision Making: DR-Submodular Objectives and Stochastic Linear ConstraintsThesis