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Incrementality Bidding via Reinforcement Learning under Mixed and Delayed Rewards

2 June 2022
Ashwinkumar Badanidiyuru
Zhe Feng
Tianxi Li
Haifeng Xu
    OffRL
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Abstract

Incrementality, which is used to measure the causal effect of showing an ad to a potential customer (e.g. a user in an internet platform) versus not, is a central object for advertisers in online advertising platforms. This paper investigates the problem of how an advertiser can learn to optimize the bidding sequence in an online manner \emph{without} knowing the incrementality parameters in advance. We formulate the offline version of this problem as a specially structured episodic Markov Decision Process (MDP) and then, for its online learning counterpart, propose a novel reinforcement learning (RL) algorithm with regret at most O~(H2T)\widetilde{O}(H^2\sqrt{T})O(H2T​), which depends on the number of rounds HHH and number of episodes TTT, but does not depend on the number of actions (i.e., possible bids). A fundamental difference between our learning problem from standard RL problems is that the realized reward feedback from conversion incrementality is \emph{mixed} and \emph{delayed}. To handle this difficulty we propose and analyze a novel pairwise moment-matching algorithm to learn the conversion incrementality, which we believe is of independent of interest.

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