CLApr 30

Entropy of Ukrainian

arXiv:2604.2753473.6
Predicted impact top 85% in CL · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work provides the first entropy estimate for Ukrainian, filling a gap in language complexity studies, but is incremental as it applies an established experimental method to a new language.

The study conducted Shannon's character prediction experiment for the Ukrainian language, recruiting 184 volunteers to estimate its entropy, obtaining an upper bound of approximately 1.201 bits per character.

In natural language processing, the entropy of a language is a measure of its unpredictability and complexity. The first study on this subject was conducted by Claude Shannon in 1951. By having participants predict the next character in a sentence, he was able to approximate the entropy of the English language. Several follow-up studies by other authors have since been conducted for English, and one for Hebrew. However, to date, Shannon's experiment has never been conducted for Ukrainian. In this paper, we perform this experiment for Ukrainian by recruiting 184 volunteers using social media channels. We rely on techniques used for English to approximate the entropy value of Ukrainian. The final result is an upper bound of $H_{upper}\approx1.201$ bits per character. We compare this to the performance of current Large Language Models. The methods and code used are also documented and published, along with a discussion of the main challenges encountered.

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