Abstract

The article introduces a methodology for forming and analyzing the network of events in news reports related to parliamentary control. This methodology relies on the application of generative artificial intelligence, and the article provides examples of its practical implementation. The revolution in artificial intelligence enables the solution of tasks not only related to identification but also to the formation of causal networks of events, where the causes and consequences are clearly presented. The utilization of large linguistic models has yielded convenient methods for extracting events from texts, filtering them, and clustering. Artificial intelligence is employed for identifying cause-and-effect relationships, significantly simplifying the processing of natural language. Visualization and cluster analysis of the formed networks can be performed using traditional tools for network analysis.

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