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  • paper12/04/2026Proceedings of the ACM Web Conference 2026

    VK-LSVD: A Large-Scale Industrial Dataset for Short-Video Recommendation

    Alexander Poplavsky, Alexander D'yakonov, Yuriy Dorn, Andrey Zimovnov

    We introduce the VK Large Short-Video Dataset (VK-LSVD), the largest publicly available industrial dataset of its kind.

    Recommender SystemsIndustrial DatasetShort-Video
  • preprint17/03/2026arXiv

    Practical MCTS-based Query Optimization: A Reproducibility Study and new MCTS algorithm for complex queries

    Vladimir Burlakov, Alena Rybakina, Sergey Kudashev, Konstantin Gilev, Alexander Demin, Denis Ponomaryov, Yuriy Dorn

    This paper presents a comprehensive reproducibility study of these methods, revealing that they often fail to support the claimed performance gains when subjected to diverse workloads.

    databasesquery optimizationmonte carlo tree searchreproducibility
  • preprint02/03/2026arXiv

    Uncertainty Quantification of Click and Conversion Estimates for the Autobidding

    Ivan Zhigalskii, Andrey Pudovikov, Aleksandr Katrutsa, Egor Samosvat

    We propose the DenoiseBid method, which corrects the generated CTRs and CVRs to make the resulting bids more efficient in auctions.

    autobidding problemuncertainty quantification
  • paper05/02/2026Doklady Mathematics

    Survey of Modern Smooth Optimization Algorithms with Comparison Oracle

    Aleksandr Lobanov, Alexander Gasnikov

    This review provides an overview of contemporary algorithms for smooth, multivariate optimization that utilize only information about the order of the function values, rather than their numerical magnitudes.

    surveysmooth optimizationcomparison oracle
  • paper05/02/2026Optimization Methods and Software

    Zeroth-order methods for non-smooth stochastic problems under heavy-tailed noise

    Nail Bashirov, Alexander Gasnikov, Aleksandr Lobanov

    We propose gradient-free algorithms with zeroth-order oracle under adversarial noise with unbounded variance, for non-smooth convex and convex-concave optimization problems.

    zeroth-order methodsconvex optimizationsaddle point problemsstochastic optimizationheavy-tailed noise
  • paper09/01/2026Journal of Mathematical Sciences

    IDENTIFICATION OF THE BRAESS PARADOX IN A STABLE DYNAMIC MODEL IN NETWORK WITH ONE SOURCE AND MULTIPLE SINKS

    Oleg Shitikov, Yuriy Dorn

    We study the problem of identifying edges in a transportation graph where the introduction of an additional toll would enhance the efficiency of network usage within the Nesterov–de Palma equilibrium model.

    OptimizationTransportation Modeling
  • paper14/11/2025APEIE 2025

    Hint Based Query Optimization with LLM Agent and Plan Similarity

    Nikita Vasilenko, Alexander Demin, Vladimir Burlakov

    A two–path architecture for query–optimizer hint selection that combines fast nearest–neighbor transfer in an LLM–derived plan–embedding space with a budgeted LLM agent that searches the hint space under DBMS feedback.

    databasesquery optimizationlanguage modelsembeddingsagent guided search
  • preprint26/10/2025arXiv

    UCB-type Algorithm for Budget-Constrained Expert Learning

    Ilgam Latypov, Alexandra Suvorikova, Alexey Kroshnin, Alexander Gasnikov, Yuriy Dorn

    We introduce M-LCB, a computationally efficient UCB-style meta-algorithm that provides anytime regret guarantees.

    expert algorithmsbudget-constrained learningmulti-armed bandits
  • preprint22/10/2025arXiv

    Autobidding Arena: unified evaluation of the classical and RL-based autobidding algorithms

    Andrey Pudovikov, Aleksandra Khirianova, Ekaterina Solodneva, Aleksandr Katrutsa, Egor Samosvat, Yuriy Dorn

    We consider the most efficient autobidding algorithms from different classes, e.g., ones based on the controllers, RL, optimal formulas, etc., and benchmark them in the bidding environment.

    autobidding problemevaluation metricsautobidding algorithms
  • preprint09/10/2025AAMAS 2026

    RARe: Raising Ad Revenue Framework with Context-Aware Reranking

    Ekaterina Solodneva, Aleksandra Khirianova, Aleksandr Katrutsa, Roman Loginov, Andrey Tikhanov, Egor Samosvat, Yuriy Dorn

    We propose and compare two different click models that take into account the context of items in a search result.

    rerankingclick modelonline advertisingrevenue maximization
  • preprint09/10/2025AAMAS 2026

    Robust autobidding for noisy conversion prediction models

    Andrey Pudovikov, Aleksandra Khirianova, Ekaterina Solodneva, Gleb Molodtsov, Aleksandr Katrutsa, Yuriy Dorn, Egor Samosvat

    We propose RobustBid, an efficient method for robust autobidding taking into account uncertainty in CTR and CVR predictions.

    autobidding problemrobust optimizationuncertainty quantification of CTR model
  • preprint06/06/2025arXiv

    Training-Free Query Optimization via LLM-Based Plan Similarity

    Nikita Vasilenko, Alexander Demin, Vladimir Burlakov

    We introduce LLM-based Plan Mapping, a framework that embeds the default execution plan of a query, finds its k nearest neighbors among previously executed plans, and recommends database hintsets based on neighborhood voting.

    databasesquery optimizationlanguage modelsembeddings
    NKph(p)p₀h(p₀)plan space · h: N → K
  • paper05/06/2025AAMAS 2025

    Fast UCB-type algorithms for stochastic bandits with heavy and super heavy symmetric noise

    Yuriy Dorn, Aleksandr Katrutsa, Ilgam Latypov, Andrey Pudovikov

    We propose a new method for constructing UCB-type algorithms for stochastic multi-armed bandits based on general convex optimization methods with an inexact oracle.

    expert algorithmsbudget-constrained learningmulti-armed bandits
  • paper28/04/2025Proceedings of the ACM on Web Conference 2025

    Bat: Benchmark for auto-bidding task

    Aleksandra Khirianova, Ekaterina Solodneva, Andrey Pudovikov, Sergey Osokin, Egor Samosvat, Yuriy Dorn, Alexander Ledovsky, Yana Zenkova

    We propose RobustBid, an efficient method for robust autobidding taking into account uncertainty in CTR and CVR predictions.

    autobidding problemrobust optimizationuncertainty quantification of CTR model
  • preprint01/03/2025AAMAS 2026

    Functional multi-armed bandit and the best function identification problems

    Yuriy Dorn, Aleksandr Katrutsa, Ilgam Latypov, Anastasiia Soboleva

    We propose two new classes of problems: the functional multi-armed bandit problem (FMAB) and the best function identification problem.

    Multi-armed banditsfunctional multi-armed banditsbest function identification
  • preprint03/02/2025arXiv

    Optimizing Online Advertising with Multi-Armed Bandits: Mitigating the Cold Start Problem under Auction Dynamics

    Anastasiia Soboleva, Andrey Pudovikov, Roman Snetkov, Alina Babenko, Egor Samosvat, Yuriy Dorn

    We developed a UCB-like algorithm under multi-armed bandit (MAB) setting for positional-based model (PBM), specifically tailored to auction pay-per-click systems.

    CTR modelmulti-armed bandits
  • preprint03/02/2025arXiv

    Optimal Traffic Allocation for Multi-Slot Sponsored Search: Balance of Efficiency and Fairness

    Anastasiia Soboleva, Alexander Ledovsky, Yuriy Dorn, Egor Samosvat, Andrey Tikhanov, Fyodor Prazdnikov

    We propose a novel ad allocation model that departs from traditional auction mechanics.

    CTR modelOptimization
  • preprint30/01/2025arXiv

    Power of Generalized Smoothness in Stochastic Convex Optimization: First- and Zero-Order Algorithms

    Aleksandr Lobanov, Alexander Gasnikov

    This paper is devoted to the study of stochastic optimization problems under the generalized smoothness assumption.

    stochastic optimizationgradient descent
  • paper14/01/2025Operations Research Forum

    γ-Competitiveness: An Approach to Multi-Objective Optimization with High Computation Costs in Lipschitz Functions

    Ilgam Latypov, Yuriy Dorn

    We introduce an extension of the concept of competitive solutions and propose the Scalarization With Competitiveness Method (SWCM) for multi-criteria problems.

    multi-objective optimization
  • paper28/12/2024Russian Journal of Nonlinear Dynamics

    On quasi-convex smooth optimization problems by a comparison oracle

    Alexander Gasnikov, Mohammad Alkousa, Aleksandr Lobanov, Yuriy Dorn, Fedor Stonyakin, Ilya Kuruzov, Sanjeev Singh

    This paper is devoted to an approach to minimizing quasi-convex functions using a recently proposed comparison oracle only.

    quasi-convex functiongradient-free algorithmsmooth functioncomparison oraclenormalized gradient descent
  • preprint02/10/2024arXiv

    Learning-Augmented Online Caching: New Upper Bounds

    Daniel Skachkov, Denis Ponomaryov, Yuriy Dorn, Alexander Demin

    We address the problem of learning-augmented online caching for DBMS in the scenario when each request is accompanied by a prediction of the next occurrence of the requested page.

    databasesonline chaching
  • preprint30/04/2024arXiv

    EEvA: Fast Expert-Based Algorithms for Buffer Page Replacement

    Alexander Demin, Yuriy Dorn, Aleksandr Katrutsa, Daniil Kazantsev, Ilgam Latypov, Yulia Maximlyuk, Denis Ponomaryov

    In this paper, we propose a new family of page replacement algorithms for DB buffer manager which demonstrate a superior performance wrt competitors on custom data access patterns and imply a low computational overhead on TPC-C.

    databasesbuffer page replacement
  • paper29/01/2024Computational Management Science

    Implicitly normalized forecaster with clipping for linear and non-linear heavy-tailed multi-armed bandits

    Yuriy Dorn, Nikita Kornilov, Nikolay Kutuzov, Alexander Nazin, Eduard Gorbunov, Alexander Gasnikov

    In this paper, we propose a new version of INF called the Implicitly Normalized Forecaster with clipping (INF-clip) for MAB problems with heavy-tailed reward distributions.

    multi-armed bandits