<?xml version="1.0" encoding="UTF-8"?>
<urlset xmlns="http://www.sitemaps.org/schemas/sitemap/0.9" generatedBy="WIX">
<url>
<loc>https://www.adkdd.org/papers/click-a%2C-buy-b%3A-rethinking-conversion-attribution-in-e-commerce-recommendations/2025</loc>
<lastmod>2025-10-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/dcn%5E2%3A-interplay-of-implicit-collision-weights-and-explicit-cross-layers-for-large-scale-recommendation/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/more-ads%2C-happier-shoppers%3A-unified-valuation-ad-allocation-at-scale/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/profit-aware-ad-ranking-with-relevance-constraint/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/side%3A-semantic-id-embedding-for-effective-learning-from-sequences/2025</loc>
<lastmod>2025-08-22</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/mitigating-position-bias-in-click-predictor-models%3A-a-novel-downsampling-approach-for-enhanced-accuracy-and-efficiency/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/mtmd%3A-a-multi-task-multi-domain-framework-for-unified-ad-lightweight-ranking-at-pinterest/2025</loc>
<lastmod>2025-08-19</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/a-bayesian-dlm-cf-framework-for-real-time-display-advertising/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/hierarchical-group-wise-ranking-framework-for-recommendation-models/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/large-language-models-for-detecting-gambling-advertisement-images-to-enhance-the-efficiency-of-the-creative-review-process/2025</loc>
<lastmod>2025-08-12</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/supercharging-jobs-marketplace%3A-optimizing-hiring-outcomes%2C-unified-jobs-marketplace%2C-big-auctions-and-beyond/2024</loc>
<lastmod>2024-08-25</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/criteo%3A-adtech-in-2024-challenges-and-perspectives/2024</loc>
<lastmod>2024-08-25</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/afa%3A-auto-tuning-filters-for-ads/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/serp-interference-network-and-its-applications-in-search-advertising/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/leveraging-instrumental-variables-in-online-advertising-auctions-%3A-robust-click-through-rate-prediction/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/cost-control-in-display-advertising%3A-theory-vs-practice/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/a-bag-of-tricks-for-scaling-cpu-based-deep-ffms-to-more-than-300m-predictions-per-second/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/ranktower%3A-a-synergistic-framework-for-enhancing-two-tower-pre-ranking-model/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/training-differentially-private-ad-prediction-models-with-semi-sensitive-features/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/trigger-relevancy-and-diversity-inefficiency-with-dual-phase-synergistic-attention-in-shopee-recommendation-ads-system/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/augmented-two-stage-bandit-framework%3A-practical-approaches-for-improved-online-ad-selection/2024</loc>
<lastmod>2024-08-21</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/multi-task-combinatorial-bandits-for-budget-allocation/2024</loc>
<lastmod>2024-08-25</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/twerc-high-performance-ensembled-candidate-generation-for-ads-recommendation-at-twitter/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/towards-the-better-ranking-consistency-a-multi-task-learning-framework-for-early-stage-ads-ranking/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/adaensemble-learning-adaptively-sparse-structured-ensemble-network-for-click-through-rate-prediction/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/practical-budget-pacing-algorithms-and-simulation-test-bed-for-ebay-marketplace-sponsored-search/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/advancing-ad-auction-realism%3A-practical-insights-%26-modeling-implications/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/staging-e-commerce-products-for-online-advertising-using-retrieval-assisted-image-generation/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/optimizing-hierarchical-queries-for-the-attribution-reporting-api/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/scaling-generative-pre-training-for-user-ad-activity-sequences/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/private-ad-modeling-with-dp-sgd/2023</loc>
<lastmod>2023-08-20</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/learning-to-bid-with-auctiongym/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/online-meta-learning-for-model-update-aggregation-in-federated-learning-for-click-through-rate-prediction/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/bidding-agent-design-in-the-linkedin-ad-marketplace/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/multimodal-transformers-for-detecting-bad-quality-ads-on-youtube/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/show-me-the-money%3A-measuring-marketing-performance-in-f2p-games-using-apple&apos;s-app-tracking-transparency-framework/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/dynamic-collaborative-filtering-thompson-sampling-for-cross-domain-advertisements-recommendation/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/programmatic-optimization-of-ad-pods-for-maximizing-consumer-engagement-and-revenue/2022</loc>
<lastmod>2022-09-04</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/learning-similarity-preserving-binary-codes-for-recommender-systems/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/b2b-advertising%3A-joint-dynamic-scoring-of-account-and-users/2022</loc>
<lastmod>2022-09-02</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/relevance-constrained-re-ranking-in-sponsored-listing-recommendations/2021</loc>
<lastmod>2021-08-10</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/handling-many-conversions-per-click-in-modeling-delayed-feedback/2021</loc>
<lastmod>2021-08-15</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/making-rewards-more-rewarding%3A-sequential-learnable-environments-for-deep-reinforcement-learning-based-sponsored-ranking/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/estimating-the-instantaneous-survival-rate-of-digital-advertising-and-marketing-ids%3A-lifespan-by-cox-proportional/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/bayesian-time-varying-coefficient-model-with-applications-to-marketing-mix-modeling/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/estimating-true-post-click-conversion-via-group-stratified-counterfactual-inference/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/learning-a-logistic-model-from-aggregated-data/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/multigraph-approach-towards-a-scalable%2C-robust-look-alikeaudience-extension-system/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/hybrid-dual-censored-joint-learning-of-reserve-prices-and-bids-for-upstream-auctioneers/2021</loc>
<lastmod>2021-08-15</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/modeling-labels-for-conversion-value-prediction/2021</loc>
<lastmod>2021-08-09</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/evolving-regulatory-trends-and-their-impact-on-ad-tech/2020</loc>
<lastmod>2020-08-17</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/computational-advertising%3A-local-vs.-system%E2%80%99s-thinking/2020</loc>
<lastmod>2020-08-13</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/marketplace-in-motion/2020</loc>
<lastmod>2020-08-13</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/beyond-auction-theory%3A-economic-models-relevant-to-computational-advertising/2020</loc>
<lastmod>2020-08-13</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/predicting-conversions-in-display-advertising-based-on-url-embeddings/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/unbiased-lift-based-bidding-system/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/contextual-bandits-for-advertising-budget-allocation/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/multi-manifold-learning-for-large-scale-targeted-advertising-system/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/advertising-incrementality-measurement-using-controlled-geo-experiments%3A-the-universal-app-campaign-case-study/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/bid-shading-by-win-rate-estimation-and-surplus-maximization/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/delayed-feedback-model-with-negative-binomial-regression-for-multiple-conversions/2020</loc>
<lastmod>2020-08-24</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/an-evaluation-framework-for-personalization-strategy-experiment-designs/2020</loc>
<lastmod>2020-08-25</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/on-the-effectiveness-of-self-supervised-pre-training-for-modeling-user-behavior-sequences/2020</loc>
<lastmod>2020-08-25</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/learning-from-logged-interventions/2017</loc>
<lastmod>2023-08-19</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/machine-learning-and-causal-inference%3A-applications-to-advertising-effectiveness/2017</loc>
<lastmod>2023-08-19</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/optimal-reserve-price-for-online-ads-trading-based-on-inventory-identification/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/deep-%26-cross-network-for-ad-click-predictions/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/cost-sensitive-learning-for-utility-optimization-in-online-advertising-auctions/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/a-practical-framework-of-conversion-rate-prediction-for-online-display-advertising/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/profit-maximization-for-online-advertising-demand-side-platforms/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/data-driven-reserve-prices-for-social-advertising-auctions-at-linkedin/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/ranking-and-calibrating-click-attributed-purchases-in-performance-display-advertising/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/an-ensemble-based-approach-to-click-through-rate-prediction-for-promoted-listings-at-etsy/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/taobao-display-advertising%3A-some-recent-tech-advances/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/tencent-ads%3A-interesting-problems-and-unique-challenges/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/on-the-causality-of-advertising/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/from-the-clouds-to-the-trenches%3A-learning-to-manage-the-marketplace/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/budgeting-and-bidding-in-ad-systems%3A-theory-and-practice/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/designing-auctions-for-search-ads/2019</loc>
<lastmod>2019-08-18</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/causally-driven-incremental-multi-touch-attribution-using-a-recurrent-neural-network/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/feasible-bidding-strategies-through-pure-exploration-bandits/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/optimal-bidding%3A-a-dual-approach/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/learning-from-multi-user-activity-trails-for-b2b-ad-targeting/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/combinatorial-keyword-recommendations-for-sponsored-search-with-deep-reinforcement-learning/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/in-app-purchase-prediction-using-bayesian-personalized-dwellday-ranking/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/modeling-advertiser-bidding-behaviors-in-google-sponsored-search-with-a-mirror-attention-mechanism/2019</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/time-aware-prospective-modeling-of-users-for-online-display-advertising/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/graphing-crumbling-cookies/2019</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/mm2rtb%3A-bringing-multimedia-metrics-to-real-time-bidding-/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/anti-ad-blocking-strategy%3A-measuring-its-true-impact-/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/blacklisting-the-blacklist-in-online-advertising-/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/attribution-modeling-increases-efficiency-of-bidding-in-display-advertising-/2017</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/optimal-bidding%2C-allocation-and-budget-spending-for-a-demand-side-platform-under-many-auction-types/2018</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/mini-batch-auc-optimization/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/forecasting-granular-audience-size-for-online-advertising/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/dynamic-hierarchical-empirical-bayes%3A-a-predictive-model-applied-to-online-advertising/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/designing-experiments-to-measure-incrementality-on-facebook/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/deep-policy-optimization-for-e-commerce-sponsored-search-ranking-strategy/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/deep-neural-net-with-attention-for-multi-channel-multi-touch-attribution/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/deep-density-networks-and-uncertainty-in-recommender-systems/2018</loc>
<lastmod>2019-08-06</lastmod>
</url>
<url>
<loc>https://www.adkdd.org/papers/a-large-scale-benchmark-for-uplift-modeling/2018</loc>
<lastmod>2020-07-27</lastmod>
</url>
</urlset>