The Online Saddle Point Problem and Online Convex Optimization with Knapsacks

成果类型:
Article
署名作者:
Cardoso, Adrian Rivera; Wang, He; Xu, Huan
署名单位:
University System of Georgia; Georgia Institute of Technology; Alibaba Group
刊物名称:
MATHEMATICS OF OPERATIONS RESEARCH
ISSN/ISSBN:
0364-765X
DOI:
10.1287/moor.2018.0330
发表日期:
2025
关键词:
algorithms regret blotto
摘要:
We study the online saddle point problem, an online learning problem where at each iteration, a pair of actions needs to be chosen without knowledge of the current and future (convex-concave) payoff functions. The objective is to minimize the gap between the cumulative payoffs and the saddle point value of the aggregate payoff function, which we measure using a metric called saddle point regret (SP-Regret). The problem generalizes the online convex optimization framework, but here, we must ensure that both players incur cumulative payoffs close to that of the Nash equilibrium of the sum of the games. We propffiffiffiffiffiffiffiffiffiffiffiffififfi pose an algorithm that achieves SP-Regret proportional to ln(T)T in the general case, and log(T) SP-Regret for the strongly convex-concave case. We also consider the special case where the payoff functions are bilinear and the decision sets are the probability simplex. In this setting, we are able to design algorithms that reduce the bounds on SP-Regret from a linear dependence in the dimension of the problem to a logarithmic one. We also study the problem under bandit feedback and provide an algorithm that achieves sub linear SP-Regret. We then consider an online convex optimization with knapsacks problem motivated by a wide variety of applications, such as dynamic pricing, auctions, and crowd root ffiffiffi sourcing. We relate this problem to the online saddle point problem and establish O(T) regret using a primal-dual algorithm.