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 up to any reasonable precision
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
We present a new method for clustering based on compression. The method doesn't use subject-spe...
Normalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, which fo...
AbstractNormalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, ...
AbstractNormalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, ...
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
We present a new similarity measure based on information theoretic measures which is superior than N...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Image similarity measurement is a fundamental and com-mon issue in a broad range of problems in imag...
We present a new method for clustering based on compression. The method doesn’t use subject-specific...
Normalized compression distance (NCD) is a parameter-free, feature-free, alignment-free, similarity ...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
We present a new method for clustering based on compression. The method doesn't use subject-spe...
Normalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, which fo...
AbstractNormalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, ...
AbstractNormalized information distance (NID) uses the theoretical notion of Kolmogorov complexity, ...
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
We present a new similarity measure based on information theoretic measures which is superior than N...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
Image similarity measurement is a fundamental and com-mon issue in a broad range of problems in imag...
We present a new method for clustering based on compression. The method doesn’t use subject-specific...
Normalized compression distance (NCD) is a parameter-free, feature-free, alignment-free, similarity ...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
We present a new method for clustering based on compression. The method doesn't use subject-spe...