GTAIAug 4, 2014

Computational Analysis of Perfect-Information Position Auctions

arXiv:1408.0703v144 citations
Originality Highly original
AI Analysis

This provides insights for search engine companies and auction designers by explaining the empirical preference for wGSP, though it is incremental as it builds on existing theoretical work with a new analytical approach.

The paper tackled the question of why search engines prefer the weighted generalized second-price auction (wGSP) over other position auctions by introducing a computational analysis method, finding that wGSP consistently performed best in terms of social welfare and relevance across various models, even where it had known worst-case inefficiencies.

After experimentation with other designs, the major search engines converged on the weighted, generalized second-price auction (wGSP) for selling keyword advertisements. Notably, this convergence occurred before position auctions were well understood (or, indeed, widely studied) theoretically. While much progress has been made since, theoretical analysis is still not able to settle the question of why search engines found wGSP preferable to other position auctions. We approach this question in a new way, adopting a new analytical paradigm we dub "computational mechanism analysis." By sampling position auction games from a given distribution, encoding them in a computationally efficient representation language, computing their Nash equilibria, and then calculating economic quantities of interest, we can quantitatively answer questions that theoretical methods have not. We considered seven widely studied valuation models from the literature and three position auction variants (generalized first price, unweighted generalized second price, and wGSP). We found that wGSP consistently showed the best ads of any position auction, measured both by social welfare and by relevance (expected number of clicks). Even in models where wGSP was already known to have bad worse-case efficiency, we found that it almost always performed well on average. In contrast, we found that revenue was extremely variable across auction mechanisms, and was highly sensitive to equilibrium selection, the preference model, and the valuation distribution.

Foundations

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

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