Decades of innovations in combinatorial problem solving have
produced better and more complex algorithms. These new methods are
better since they can solve larger problems and address new
application domains. They are also more complex which means that
they are hard to reproduce and often harder to fine-tune to the
peculiarities of a given problem. This last point has created a
paradox where efficient tools are out of reach of
practitioners.
Autonomous search (AS) represents a new research field defined
to precisely address the above challenge. Its major strength and
originality consist in the fact that problem solvers can now
perform self-improvement operations based on analysis of the
performances of the solving process -- including short-term
reactive reconfiguration and long-term improvement through
self-analysis of the performance, offline tuning and online
control, and adaptive control and supervised control. Autonomous
search "crosses the chasm" and provides engineers and practitioners
with systems that are able to autonomously self-tune their
performance while effectively solving problems.
This is the first book dedicated to this topic, and it can be
used as a reference for researchers, engineers, and postgraduates
in the areas of constraint programming, machine learning,
evolutionary computing, and feedback control theory. After the
editors' introduction to autonomous search, the chapters are
focused on tuning algorithm parameters, autonomous complete
(tree-based) constraint solvers, autonomous control in
metaheuristics and heuristics, and future autonomous solving
paradigms.
Autonomous search (AS) represents a new research field defined
to precisely address the above challenge. Its major strength and
originality consist in the fact that problem solvers can now
perform self-improvement operations based on analysis of the
performances of the solving process -- including short-term
reactive reconfiguration and long-term improvement through
self-analysis of the performance, offline tuning and online
control, and adaptive control and supervised control. Autonomous
search "crosses the chasm" and provides engineers and practitioners
with systems that are able to autonomously self-tune their
performance while effectively solving problems.
This is the first book dedicated to this topic, and it can be
used as a reference for researchers, engineers, and postgraduates
in the areas of constraint programming, machine learning,
evolutionary computing, and feedback control theory. After the
editors' introduction to autonomous search, the chapters are
focused on tuning algorithm parameters, autonomous complete
(tree-based) constraint solvers, autonomous control in
metaheuristics and heuristics, and future autonomous solving
paradigms.
This is the first book dedicated to this topic, and it can be
used as a reference for researchers, engineers, and postgraduates
in the areas of constraint programming, machine learning,
evolutionary computing, and feedback control theory. After the
editors' introduction to autonomous search, the chapters are
focused on tuning algorithm parameters, autonomous complete
(tree-based) constraint solvers, autonomous control in
metaheuristics and heuristics, and future autonomous solving
paradigms.
This is the first book dedicated to this topic, and it can be
used as a reference for researchers, engineers, and postgraduates
in the areas of constraint programming, machine learning,
evolutionary computing, and feedback control theory. After the
editors' introduction to autonomous search, the chapters are
focused on tuning algorithm parameters, autonomous complete
(tree-based) constraint solvers, autonomous control in
metaheuristics and heuristics, and future autonomous solving
paradigms.
General
Is the information for this product incomplete, wrong or inappropriate?
Let us know about it.
Does this product have an incorrect or missing image?
Send us a new image.
Is this product missing categories?
Add more categories.
Review This Product
No reviews yet - be the first to create one!