Golubev, A., Rusnachenko, N. and Loukachevitch, N., 2023. RuSentNE-2023: Evaluating entity-oriented sentiment analysis on Russian news texts. In: Dialogue 2023, 14-16 June 2023, Moscow, Russia, 142-160.
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Official URL: https://www.researchgate.net/publication/377205905...
DOI: 10.28995/2075-7182-2023-22-130-141
Abstract
The paper describes the RuSentNE-2023 evaluation devoted to targeted sentiment analysis in Russian news texts. The task is to predict sentiment towards a named entity in a single sentence. The dataset for RuSentNE-2023 evaluation is based on the Russian news corpus RuSentNE having rich sentiment-related annotation. The corpus is annotated with named entities and sentiments towards these entities, along with related effects and emotional states. The evaluation was organized using the CodaLab competition framework. The main evaluation measure was macro-averaged measure of positive and negative classes. The best results achieved were of 66% Macro F-measure (Positive+Negative classes). We also tested ChatGPT on the test set from our evaluation and found that the zero-shot answers provided by ChatGPT reached 60% of the F-measure, which corresponds to 4th place in the evaluation. ChatGPT also provided detailed explanations of its conclusion. This can be considered as quite high for zero-shot application.
| Item Type: | Conference or Workshop Item (Paper) |
|---|---|
| ISSN: | 2221-7932 |
| Group: | Faculty of Media, Science and Technology |
| ID Code: | 41506 |
| Deposited By: | Symplectic RT2 |
| Deposited On: | 20 Mar 2026 15:52 |
| Last Modified: | 20 Mar 2026 15:52 |
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