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Online quantum mixture regression for trajectory learning by demonstration
2013
2013 IEEE/RSJ International Conference on Intelligent Robots and Systems
In this work, we present the online Quantum Mixture Model (oQMM), which combines the merits of quantum mechanics and stochastic optimization. More specifically it allows for quantum effects on the mixture states, which in turn become a superposition of conventional mixture states. We propose an efficient stochastic online learning algorithm based on the online Expectation Maximization (EM), as well as a generation and decay scheme for model components. Our method is suitable for complex robotic
doi:10.1109/iros.2013.6696814
dblp:conf/iros/KorkinofD13
fatcat:rnqyiuuiqrggrdhb43d6v6yloe