renhets
Renhets is a theoretical construct used in information theory and data processing to quantify the extent to which redundant information has been removed from a signal, dataset, or communication channel. It is intended to complement measures of uncertainty like entropy by focusing on redundancy elimination rather than randomness.
Origin and terminology: The term renhets has appeared in speculative discussions on data efficiency and signal
Definition: Renhets can be described as the ratio of redundant information removed to the total information
Calculation and methods: Renhets is typically estimated by comparing representations before and after a processing stage
Applications and limitations: Potential uses include evaluating data compression schemes, optimizing streaming bandwidth, and guiding feature
See also: Entropy, Redundancy, Information theory, Data compression, Feature selection.