Applications
Vector quantization is used for lossy data compression, lossy data correction, pattern recognition and density estimation.
Lossy data correction, or prediction, is used to recover data missing from some dimensions. It is done by finding the nearest group with the data dimensions available, then predicting the result based on the values for the missing dimensions, assuming that they will have the same value as the group's centroid.
For density estimation, the area/volume that is closer to a particular centroid than to any other is inversely proportional to the density (due to the density matching property of the algorithm).
Read more about this topic: Vector Quantization
Main Site Subjects
Related Phrases
Related Words