DocumentCode
12253
Title
Discovering Data Set Nature through Algorithmic Clustering Based on String Compression
Author
Granados, Ana ; Koroutchev, Kostadin ; de Borja Rodriguez, Francisco
Author_Institution
CES Felipe II, Univ. Complutense de Madrid, Aranjuez, Spain
Volume
27
Issue
3
fYear
2015
fDate
March 1 2015
Firstpage
699
Lastpage
711
Abstract
Text data sets can be represented using models that do not preserve text structure, or using models that preserve text structure. Our hypothesis is that depending on the data set nature, there can be advantages using a model that preserves text structure over one that does not, and vice versa. The key is to determine the best way of representing a particular data set, based on the data set itself. In this work, we proposde B“orjae to investigate this problem by combining text distortion and algorithmic clustering based on string compression. Specifically, a distortion technique previously developed by the authors is applied to destroy text structure progressively. Following this, a clustering algorithm based on string compression is used to analyze the effects of the distortion on the information contained in the texts. Several experiments are carried out on text data sets and artificially-generated data sets. The results show that in strongly structural data sets the clustering results worsen as text structure is progressively destroyed. Besides, they show that using a compressor which enables the choice of the size of the left-context symbols helps to determine the nature of the data sets. Finally, the results are contrasted with a method based on multidimensional projections and analogous conclusions are obtained.
Keywords
data compression; pattern clustering; text analysis; algorithmic clustering; data set nature; left-context symbols; string compression; text data sets; text distortion; Clustering algorithms; Compression algorithms; Context; Context modeling; Data compression; Dictionaries; Grammar; Normalized compression distance; PPMD order; compression-based text clustering; data compression; dendrogram silhouette coefficient; multidimensional projections; word removal;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2014.2345396
Filename
6871407
Link To Document