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The Dresden-based scientists mathematically studied the semantic properties of texts by translating ten different English texts into various codes. One of the chosen texts was the English edition of Leo Tolstoy’s “War and Peace”.
One example of what the scientists did was translate letters in a text into a binary sequence. They replaced all vowels with 1 and all consonants with 0. By employing additional mathematical functions, the scientists examined different levels of the text – both individual vowels and letters, as well as whole words – which had been translated into various codes. In so doing, it was possible to identify repeating patterns within the text as a whole. Such correlation within a text is referred to as long-range correlation.
Keywords are more frequent in certain passages of text
The scientists found this long-range correlation not only between letters, but also within higher linguistic levels, such as words. Within individual levels, the correlation remains when looking at different texts. “What we find much more interesting is to examine how the correlation changes between the levels,” says Altmann. Long-range correlation enables the scientists to draw conclusions about the extent to which certain words are connected to a topic. “Even the connection between a word and the letters it is composed of can be analysed in this way,” explains Altmann.
Furthermore, the scientists also studied what is known as “burstiness”, which describes whether increased occurrence of a pattern of characters is present in a passage of text. It shows, for instance, whether a word comes up at increased frequency in a certain text section. The more frequently a certain word is used in a passage, the more likely it is that that word is representative of a certain subject.
The scientists demonstrated that certain words come up repeatedly throughout a text, are however not present in bursts in a given text passage. Although these words do exhibit long-range correlation, they are not closely related to the topic at hand. “Articles are the best examples of these. They come up very frequently in every text, but they are not crucial in conveying a given topic,” says Altmann.
Statistical text analysis works irrespective of language
Whereas both letters and words exhibit long-range correlation, it is rare for letters to appear in bursts at certain points in a text. “It is, in fact, very rare for a letter to be as closely connected with a topic as the word it forms a part of. In a manner of speaking, letters can be used more flexibly,” explains Altmann. An “a”, for example, can be a part of a great many words that have no connection with one and the same topic.
The scientists employed statistical text analysis as an easy way of identifying the defining words of a given text. “By so doing, it is absolutely irrelevant which language the text is written in. The only thing that matters is the story and not language-specific rules,” says Altmann. Their findings could be used in future to improve Internet search engines, and they could also help to analyse texts and identify plagiarism.
Contacts and sources:
Max-Planck-Gesellschaft
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