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JOURNALS // Doklady Rossijskoj Akademii Nauk. Mathematika, Informatika, Processy Upravlenia // Archive

Dokl. RAN. Math. Inf. Proc. Upr., 2023 Volume 514, Number 2, Pages 333–342 (Mi danma477)

SPECIAL ISSUE: ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING TECHNOLOGIES

MTS Kion implicit contextualised sequential dataset for movie recommendation

I. Safiloa, D. Tikhonovichb, A. V. Petrovc, D. I. Ignatovd

a MTS, HSE University, Moscow, Russian Federation
b MTS, Moscow, Russian Federation
c University of Glasgow, Glasgow, United Kingdom
d HSE University, Moscow, Russian Federation

Abstract: We present a new movie and TV show recommendation dataset collected from the real users of MTS Kion video-on-demand platform. In contrast to other popular movie recommendation datasets, such as MovieLens or Netflix, our dataset is based on the implicit interactions registered at the watching time, rather than on explicit ratings. We also provide rich contextual and side information including interactions characteristics (such as temporal information, watch duration and watch percentage), user demographics and rich movies meta-information. In addition, we describe the MTS Kion Challenge – an online recommender systems challenge that was based on this dataset – and provide an overview of the best performing solutions of the winners. We keep the competition sandbox open, so the researchers are welcome to try their own recommendation algorithms and measure the quality on the private part of the dataset.

Presented: A. I. Avetisyan
Received: 30.05.2023
Revised: 15.10.2023
Accepted: 20.10.2023

DOI: 10.31857/S2686954323600428


 English version:
Doklady Mathematics, 2023, 108:suppl. 2, S456–S464

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© Steklov Math. Inst. of RAS, 2024