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Competition-Aware CPC Forecasting with Near-Market Coverage

arXiv cs.LG / 3/16/2026

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Key Points

  • The paper forecasts weekly CPC for 1,811 keyword series using Google Ads auction logs from 2021–2023 in a concentrated car-rental market, highlighting how competition drives auction volatility.
  • It introduces three augmentation signals: semantic neighborhoods from pretrained transformer representations of keyword text, behavioral neighborhoods from Dynamic Time Warping alignment of CPC trajectories, and geographic-intent covariates capturing localized demand and marketplace heterogeneity.
  • These signals are evaluated as both standalone covariates and relational priors within spatiotemporal graph forecasters, benchmarked against strong statistical, neural, and time-series baselines.
  • Across methods, competition-aware augmentation improves stability and error profiles at medium- to longer-horizon forecasts when competitive regimes shift, offering a scalable way to approximate latent competition and enhance CPC forecasting in auction-driven markets.

Abstract

Cost-per-click (CPC) in paid search is a volatile auction outcome generated by a competitive landscape that is only partially observable from any single advertiser's history. Using Google Ads auction logs from a concentrated car-rental market (2021--2023), we forecast weekly CPC for 1,811 keyword series and approximate latent competition through complementary signals derived from keyword text, CPC trajectories, and geographic market structure. We construct (i) semantic neighborhoods and a semantic keyword graph from pretrained transformer-based representations of keyword text, (ii) behavioral neighborhoods via Dynamic Time Warping (DTW) alignment of CPC trajectories, and (iii) geographic-intent covariates capturing localized demand and marketplace heterogeneity. We extensively evaluate these signals both as stand-alone covariates and as relational priors in spatiotemporal graph forecasters, benchmarking them against strong statistical, neural, and time-series foundation-model baselines. Across methods, competition-aware augmentation improves stability and error profiles at business-relevant medium and longer horizons, where competitive regimes shift and volatility is most consequential. The results show that broad market-outcome coverage, combined with keyword-derived semantic and geographic priors, provides a scalable way to approximate latent competition and improve CPC forecasting in auction-driven markets.