N.-Y.: Chapman and Hall/CRC, 2013. — 208 p. — ISBN: 978-1-4398-0616-6.
Similar to other data mining and machine learning tasks, multi-label learning suffers from dimensionality. An effective way to mitigate this problem is through dimensionality reduction, which extracts a small number of features by removing irrelevant, redundant, and noisy information. The data mining and machine learning literature currently lacks a unified treatment of multi-label dimensionality reduction that incorporates both algorithmic developments and applications.
Addressing this shortfall,
Multi-Label Dimensionality Reduction covers the methodological developments, theoretical properties, computational aspects, and applications of many multi-label dimensionality reduction algorithms. It explores numerous research questions, including:
How to fully exploit label correlations for effective dimensionality reduction;
How to scale dimensionality reduction algorithms to large-scale problems;
How to effectively combine dimensionality reduction with classification;
How to derive sparse dimensionality reduction algorithms to enhance model interpretability;
How to perform multi-label dimensionality reduction effectively in practical applications.
The authors emphasize their extensive work on dimensionality reduction for multi-label learning. Using a case study of Drosophila gene expression pattern image annotation, they demonstrate how to apply multi-label dimensionality reduction algorithms to solve real-world problems. A supplementary website provides a MatLAB package for implementing popular dimensionality reduction algorithms.