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News
May 20, 2026
HSE University Opens First Representative Office of Satellite Laboratory in Brazil
HSE University-St Petersburg opened a representative office of the Satellite Laboratory on Social Entrepreneurship at the University of Campinas in Brazil. The platform is going to unite research and educational projects in the spheres of sustainable development, communications and social innovations.
May 18, 2026
The 'Second Shift' Is Not Why Women Avoid News
Women are more likely than men to avoid political and economic news, but the reasons for this behaviour are linked less to structural inequality or family-related stress than to personal attitudes and the emotional perception of news content. This conclusion was reached by HSE researchers after analysing data from a large-scale survey of more than 10,000 residents across 61 regions of Russia. The study findings have been published in Woman in Russian Society.
May 15, 2026
Preserving Rationality in a Period of Turbulence
The HSE International Laboratory for Logic, Linguistics and Formal Philosophy studies logic and rationality in a transformed world characterised by a diversity of logical systems and rational agents. The laboratory supports and develops academic ties with Russian and international partners. The HSE News Service spoke with the head of the laboratory, Prof. Elena Dragalina-Chernaya, about its work.

 

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?

Touching the Limits of a Dataset in Video-Based Facial Expression Recognition

P. 633–638.
Churaev E., Savchenko A.

In this paper, we examine the issue of video-based facial emotion recognition algorithms which show excellent performance on some benchmarks, but have much worse accuracy in practical applications. For example, the typical error rate of contemporary deep neural networks on the RAVDESS dataset is less than 5%. We argue that such results are obtained only if the split of the whole dataset is incorrect, so that the same persons are present in both training and test sets. It is claimed that it is more frankly to use the actor-based split, in which persons in the training and test sets are disjoint. It is experimentally demonstrated that the near state-of-the-art neural network model pre-trained on the AffectNet dataset achieves 99% accuracy on conventional split of the RAVDESS dataset. However, when we split the dataset by the actors and training and testing sets have only unique persons then the accuracy will be 20-30% lower.

Language: English
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Keywords: emotion recognitiondeep learningconvolutional neural networks

In book

2021 International Russian Automation Conference (RusAutoCon)
IEEE, 2021.
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