The statistical trade-off between word order and word structure - large-scale evidence for the principle of least effort
August 11, 2016 ยท Declared Dead ยท ๐ PLoS ONE
"No code URL or promise found in abstract"
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Authors
Alexander Koplenig, Peter Meyer, Sascha Wolfer, Carolin Mueller-Spitzer
arXiv ID
1608.03587
Category
cs.CL: Computation & Language
Citations
84
Venue
PLoS ONE
Last Checked
4 months ago
Abstract
Languages employ different strategies to transmit structural and grammatical information. While, for example, grammatical dependency relationships in sentences are mainly conveyed by the ordering of the words for languages like Mandarin Chinese, or Vietnamese, the word ordering is much less restricted for languages such as Inupiatun or Quechua, as those languages (also) use the internal structure of words (e.g. inflectional morphology) to mark grammatical relationships in a sentence. Based on a quantitative analysis of more than 1,500 unique translations of different books of the Bible in more than 1,100 different languages that are spoken as a native language by approximately 6 billion people (more than 80% of the world population), we present large-scale evidence for a statistical trade-off between the amount of information conveyed by the ordering of words and the amount of information conveyed by internal word structure: languages that rely more strongly on word order information tend to rely less on word structure information and vice versa. In addition, we find that - despite differences in the way information is expressed - there is also evidence for a trade-off between different books of the biblical canon that recurs with little variation across languages: the more informative the word order of the book, the less informative its word structure and vice versa. We argue that this might suggest that, on the one hand, languages encode information in very different (but efficient) ways. On the other hand, content-related and stylistic features are statistically encoded in very similar ways.
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