TL;DR
This paper introduces Statistical Arbitrage Mining (SAM), a novel data mining approach that exploits price discrepancies in display advertising markets by dynamically optimizing bids to maximize arbitrage profit while managing risk.
Contribution
The paper proposes a new meta-bidding framework called SAM that jointly optimizes bid strategies and risk management for arbitrage in real-time bidding display advertising.
Findings
Offline experiments show significant profit potential.
Online A/B tests demonstrate effectiveness in real-world settings.
SAM outperforms baseline bidding strategies.
Abstract
We study and formulate arbitrage in display advertising. Real-Time Bidding (RTB) mimics stock spot exchanges and utilises computers to algorithmically buy display ads per impression via a real-time auction. Despite the new automation, the ad markets are still informationally inefficient due to the heavily fragmented marketplaces. Two display impressions with similar or identical effectiveness (e.g., measured by conversion or click-through rates for a targeted audience) may sell for quite different prices at different market segments or pricing schemes. In this paper, we propose a novel data mining paradigm called Statistical Arbitrage Mining (SAM) focusing on mining and exploiting price discrepancies between two pricing schemes. In essence, our SAMer is a meta-bidder that hedges advertisers' risk between CPA (cost per action)-based campaigns and CPM (cost per mille impressions)-based ad…
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