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July 16, 2026
Team Success: Aligning Means with Objectives
In corporations, sports, and academia, people often face challenges they cannot handle alone. In such cases, selecting the right team is crucial. Tatiana Mayskaya, Associate Professor at the HSE Faculty of Economic Sciences and the International College of Economics and Finance, together with colleagues from foreign universities, examined team characteristics and found that less diverse teams are better suited to objectives where a high average performance is important, whereas more diverse teams are preferable when avoiding failure is critical. The paper has been published in Economic Theory.
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July 15, 2026
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Improved High-Probability Bounds for the Temporal Difference Learning Algorithm via Exponential Stability

Ch. 247. P. 4511–4547.
Samsonov S., Tiapkin D., Naumov A., Moulines E.
Language: English
Text on another site
Keywords: GTD learninglinear stochastic approximationстохастическая аппроксимацияRandom matrix products
Publication based on the results of:
Development and theoretical analysis of new effective stochastic machine learning algorithms (2024)

In book

Proceedings of Machine Learning Research. Volume 247: The Thirty Seventh Annual Conference on Learning Theory, 30-3 July 2023, Edmonton, Canada
PMLR, 2024.
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