Online Learning of Optimal Bidding Strategy in Repeated Multi-Commodity Auctions
Abstract
We study the online learning problem of a bidder who participates in repeated auctions. With the goal of maximizing his T-period payoff, the bidder determines the optimal allocation of his budget among his bids for $K$ goods at each period. As a bidding strategy, we propose a polynomial-time algorithm, inspired by the dynamic programming approach to the knapsack problem. The proposed algorithm, referred to as dynamic programming on discrete set (DPDS), achieves a regret order of $O(\sqrt{T\log{T}})$. By showing that the regret is lower bounded by $\Omega(\sqrt{T})$ for any strategy, we conclude that DPDS is order optimal up to a $\sqrt{\log{T}}$ term. We evaluate the performance of DPDS empirically in the context of virtual trading in wholesale electricity markets by using historical data from the New York market. Empirical results show that DPDS consistently outperforms benchmark heuristic methods that are derived from machine learning and online learning approaches.
Cite
Text
Baltaoglu et al. "Online Learning of Optimal Bidding Strategy in Repeated Multi-Commodity Auctions." Neural Information Processing Systems, 2017.Markdown
[Baltaoglu et al. "Online Learning of Optimal Bidding Strategy in Repeated Multi-Commodity Auctions." Neural Information Processing Systems, 2017.](https://mlanthology.org/neurips/2017/baltaoglu2017neurips-online/)BibTeX
@inproceedings{baltaoglu2017neurips-online,
title = {{Online Learning of Optimal Bidding Strategy in Repeated Multi-Commodity Auctions}},
author = {Baltaoglu, M. Sevi and Tong, Lang and Zhao, Qing},
booktitle = {Neural Information Processing Systems},
year = {2017},
pages = {4507-4517},
url = {https://mlanthology.org/neurips/2017/baltaoglu2017neurips-online/}
}