Valery Solovyev

2papers

2 Papers

CLJun 13, 2022
Automatic generation of a large dictionary with concreteness/abstractness ratings based on a small human dictionary

Vladimir Ivanov, Valery Solovyev

Concrete/abstract words are used in a growing number of psychological and neurophysiological research. For a few languages, large dictionaries have been created manually. This is a very time-consuming and costly process. To generate large high-quality dictionaries of concrete/abstract words automatically one needs extrapolating the expert assessments obtained on smaller samples. The research question that arises is how small such samples should be to do a good enough extrapolation. In this paper, we present a method for automatic ranking concreteness of words and propose an approach to significantly decrease amount of expert assessment. The method has been evaluated on a large test set for English. The quality of the constructed dictionaries is comparable to the expert ones. The correlation between predicted and expert ratings is higher comparing to the state-of-the-art methods.

AIAug 28, 2014
Mathematical Knowledge Representation: Semantic Models and Formalisms

Alexander Elizarov, Alexander Kirillovich, Evgeny Lipachev et al.

The paper provides a survey of semantic methods for solution of fundamental tasks in mathematical knowledge management. Ontological models and formalisms are discussed. We propose an ontology of mathematical knowledge, covering a wide range of fields of mathematics. We demonstrate applications of this representation in mathematical formula search, and learning.