IRAISep 21, 2022

Towards Trustworthy AI-Empowered Real-Time Bidding for Online Advertisement Auctioning

arXiv:2210.07770v113 citationsh-index: 10
Originality Synthesis-oriented
AI Analysis

It provides a foundational resource for researchers entering the field of trustworthy AIRTB, which is crucial for improving online advertising systems, but it is incremental as it synthesizes existing knowledge rather than introducing new methods.

This paper addresses the lack of a comprehensive survey on trustworthy AI-empowered Real-Time Bidding (AIRTB) systems by analyzing stakeholder concerns and proposing taxonomies for security, robustness, and fairness, while reviewing existing strategies and future directions.

Artificial intelligence-empowred Real-Time Bidding (AIRTB) is regarded as one of the most enabling technologies for online advertising. It has attracted significant research attention from diverse fields such as pattern recognition, game theory and mechanism design. Despite of its remarkable development and deployment, the AIRTB system can sometimes harm the interest of its participants (e.g., depleting the advertisers' budget with various kinds of fraud). As such, building trustworthy AIRTB auctioning systems has emerged as an important direction of research in this field in recent years. Due to the highly interdisciplinary nature of this field and a lack of a comprehensive survey, it is a challenge for researchers to enter this field and contribute towards building trustworthy AIRTB technologies. This paper bridges this important gap in trustworthy AIRTB literature. We start by analysing the key concerns of various AIRTB stakeholders and identify three main dimensions of trust building in AIRTB, namely security, robustness and fairness. For each of these dimensions, we propose a unique taxonomy of the state of the art, trace the root causes of possible breakdown of trust, and discuss the necessity of the given dimension. This is followed by a comprehensive review of existing strategies for fulfilling the requirements of each trust dimension. In addition, we discuss the promising future directions of research essential towards building trustworthy AIRTB systems to benefit the field of online advertising.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes