Abstract:
Argumentation mining in texts has attracted the attention of researchers
in recent years due to a wide range of applications, in particular, in the analysis of scientific
and legal texts, news articles, political debates, student essays and social media.
Recently, a new task has been set in this area— aspect-based argumentation mining,
where an aspect is defined as a property of the object, regarding which the argument
is being built. Accounting for the aspects allows, on the one hand, to clarify the
direction of the argumentation and understanding of the argument structure; on the
other hand, it can be used to generate high-quality and aspect-specific arguments.
The article proposes a method for classifying aspects of argumentation in texts
in Russian. On its basis we train and study the models for classifying aspects
of argumentation using machine learning and neural networks. For the first time,
a Russian-language text corpus was formed, including 1,426 sentences and marked by 16
aspects of argumentation, a neural network language model ArgBERT for classifying
arguments was built, and Random Forest models were trained to classify aspects
of argumentation. The classification performance obtained on the basis of Random
Forest models is 0.6373 by F1-score. The developed models demonstrate the best
performance for the aspects “Safety”, “Impact on health”, “Influence on the psyche”,
“Attitude of the authorities” and “Standard of living” (F1-score is higher than 0.75).
Key words and phrases:argumentation mining, text corpora, neural network language models, machine learning, Random Forest, aspects of argumentation.