Toward a statistical mechanics of four letter words
Stephens, Greg J., Bialek, William
–arXiv.org Artificial Intelligence
Princeton Center for Theoretical Physics, Princeton University, Princeton, New Jersey 08544 USA (Dated: December 13, 2021) We consider words as a network of interacting letters, and approximate the probability distribution of states taken on by this network. Despite the intuition that the rules of English spelling are highly combinatorial (and arbitrary), we find that maximum entropy models consistent with pairwise correlations among letters provide a surprisingly good approximation to the full statistics of four letter words, capturing 92% of the multi-information among letters and even'discovering' real words that were not represented in the data from which the pairwise correlations were estimated. The maximum entropy model defines an energy landscape on the space of possible words, and local minima in this landscape account for nearly two-thirds of words used in written English. Many complex systems convey an impression of order into these controversies about language in the broad that is not so easily captured by the traditional tools of sense, but rather to test the power of pairwise interactions theoretical physics. Thus, it is not clear what sort of to capture seemingly complex structure.
arXiv.org Artificial Intelligence
Dec-31-2007
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