Anastasiya Lopukhina


2025

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Automatic detection of dyslexia based on eye movements during reading in Russian
Anna Laurinavichyute | Anastasiya Lopukhina | David Robert Reich
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)

Dyslexia, a common learning disability, requires an early diagnosis. However, current screening tests are very time- and resource-consuming. We present an LSTM that aims to automatically classify dyslexia based on eye movements recorded during natural readingcombined with basic demographic information and linguistic features. The proposed model reaches an AUC of 0.93 and outperforms thestate-of-the-art model by 7 %. We report several ablation studies demonstrating that the fixation features matter the most for classification.

2016

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Regular polysemy: from sense vectors to sense patterns
Anastasiya Lopukhina | Konstantin Lopukhin
Proceedings of the 5th Workshop on Cognitive Aspects of the Lexicon (CogALex - V)

Regular polysemy was extensively investigated in lexical semantics, but this phenomenon has been very little studied in distributional semantics. We propose a model for regular polysemy detection that is based on sense vectors and allows to work directly with senses in semantic vector space. Our method is able to detect polysemous words that have the same regular sense alternation as in a given example (a word with two automatically induced senses that represent one polysemy pattern, such as ANIMAL / FOOD). The method works equally well for nouns, verbs and adjectives and achieves average recall of 0.55 and average precision of 0.59 for ten different polysemy patterns.