Lightweight Auto-bidding based on Traffic Prediction in Live Advertising
Bo Yang, Ruixuan Luo, Junqi Jin, Han Zhu

TL;DR
This paper introduces BiCB, a lightweight auto-bidding algorithm for live advertising that combines traffic prediction and mathematical analysis to optimize bidding with low computational complexity and real-time performance.
Contribution
It proposes a novel auto-bidding algorithm that integrates traffic estimation and optimal bidding formulas, addressing real-time constraints and computational efficiency.
Findings
BiCB achieves comparable or better performance than existing methods.
The algorithm demonstrates low computational complexity suitable for real-time bidding.
Experimental results validate the effectiveness and low cost of BiCB.
Abstract
Internet live streaming is widely used in online entertainment and e-commerce, where live advertising is an important marketing tool for anchors. An advertising campaign hopes to maximize the effect (such as conversions) under constraints (such as budget and cost-per-click). The mainstream control of campaigns is auto-bidding, where the performance depends on the decision of the bidding algorithm in each request. The most widely used auto-bidding algorithms include Proportional-Integral-Derivative (PID) control, linear programming (LP), reinforcement learning (RL), etc. Existing methods either do not consider the entire time traffic, or have too high computational complexity. In this paper, the live advertising has high requirements for real-time bidding (second-level control) and faces the difficulty of unknown future traffic. Therefore, we propose a lightweight bidding algorithm…
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Taxonomy
TopicsImage and Video Quality Assessment · Advanced Steganography and Watermarking Techniques · Multimedia Communication and Technology
