information theory

Information Theory in Multi-Label Feature Selection: An Analytical Review

In the context of multi-label learning, feature selection (MLFS) is a key process for handling high-dimensional datasets, aiming to retain the most informative features while preserving inter-label relationships.  This study presents an extensive overview of state-of-the-art MLFS approaches founded on principles from information theory.  The paper first introduces the fundamental concepts of information theory, then provides a detailed review of representative MLFS methods along with their theoretical background.  Performance assessments are carried out on real-world mu

Optimization the afc of sound reproduction device under the influence of acoustic noise

The state standard for audio frequency amplifiers (LFA) requires the uniform amplitude-frequency characteristic (AFC) in the frequency range from 40 Hz to 18 kHz. But the test of high quality amplifiers on motor vehicles have shown that for the same output power verbal intelligibility is worse obtained than with simpler devices.