Описание книги
This unique compendium presents an introduction to problem solving, information theory, statistical machine learning, stochastic methods and quantum computation. It indicates how to apply quantum computation to problem solving, machine learning and quantum-like models to decision making — the core disciplines of artificial intelligence.Most of the chapters were rewritten and extensive new materials were updated. New topics include quantum machine learning, quantum-like Bayesian networks and mind in Everett many-worlds.<b>Contents:</b> <ul><li>Introduction</li><li>Computation</li><li>Problem Solving</li><li>Information</li><li>Reversible Algorithms</li><li>Probability</li><li>Introduction to Quantum Physics</li><li>Computation with Qubits</li><li>Periodicity</li><li>Search</li><li>Quantum Problem-Solving</li><li>Grover's Algorithm and the Input Problem</li><li>Statistical Machine Learning</li><li>Linear-Algebra Based Quantum Machine Learning</li><li>Stochastic Methods</li><li>Adiabatic Quantum Computation and Quantum Annealing</li><li>Quantum Cognition</li><li>Quantum like-Evolution</li><li>Quantum Computation and the Multiverse</li><li>Conclusion</li></ul><br><b>Readership:</b> Professionals, researchers, academics, and graduate students in databases, artificial intelligence, pattern recognition and neural networks. Quantum Computing;Quantum Theory;AI;Machine Learning;Quantum Machine Learning;Quantum Cognition;Multiverse00