Description: ector quantization is a classical quantization technique from signal processing which allows the modeling of probability density functions by the distribution of prototype vectors. It was originally used for data compression. It works by dividing a large set of points (vectors) into groups having approximately the same number of points closest to them. Each group is represented by its centroid point, as in k-means and some other clustering algorithms.
Digital libraries not only consist of text data, but also speech and image data. To compress speech data techniques such as vector quantization (VQ) are used.
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module 1\PA1_fibonacci.txt.txt
........\PB1_EmployeesWages.txt.txt
........\.C1_Fibonacci\PC1_Fibonacci.class
........\.............\PC1_Fibonacci.java
........\.............\PC1_Fibonacci.java.bak
........\..3_EmployeesWages\payrole.txt
........\..................\PC3_EmployeesWages.class
........\..................\PC3_EmployeesWages.java
........\..................\PC3_EmployeesWages.java.bak
........\PC1_Fibonacci
........\PC3_EmployeesWages
module 1