Latent factor analysis models are an effective type of machine learning
model for addressing high-dimensional and sparse matrices, which are
encountered in many big-data-related industrial applications. The
performance of a latent factor analysis model relies heavily on
appropriate hyper-parameters. However, most hyper-parameters are
data-dependent, and using grid-search to tune these hyper-parameters is
truly laborious and expensive in computational terms. Hence, how to
achieve efficient hyper-parameter adaptation for latent factor analysis
models has become a significant question.
This is the first book to focus on how particle swarm optimization can
be incorporated into latent factor analysis for efficient
hyper-parameter adaptation, an approach that offers high scalability in
real-world industrial applications.
The book will help students, researchers and engineers fully understand
the basic methodologies of hyper-parameter adaptation via particle swarm
optimization in latent factor analysis models. Further, it will enable
them to conduct extensive research and experiments on the real-world
applications of the content discussed.