Nonapproximability of the normalized information distance

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摘要

Normalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, which for practical purposes is approximated by the length of the compressed version of the file involved, using a real-world compression program. This practical application is called ‘normalized compression distance’ and it is trivially computable. It is a parameter-free similarity measure based on compression, and is used in pattern recognition, data mining, phylogeny, clustering, and classification. The complexity properties of its theoretical precursor, the NID, have been open. We show that the NID is neither upper semicomputable nor lower semicomputable.

论文关键词:Normalized information distance,Kolmogorov complexity,Semicomputability

论文评审过程:Received 23 October 2009, Revised 11 June 2010, Accepted 28 June 2010, Available online 3 July 2010.

论文官网地址:https://doi.org/10.1016/j.jcss.2010.06.018