In this paper, we address the problem of incrementally optimizing constraint networks for maximum likelihood map learning. Our approach allows a robot to efficiently compute configurations of the network with small errors while the robot moves through the environment. We apply a variant of stochastic gradient descent and use a tree-based parameterization of the nodes in the network. By integrating adaptive learning rates in the parameterization of the network, our algorithm can use previously computed solutions to determine the result of the next optimization run. Additionally, our approach updates only the parts of the network which are affected by the newly incorporated measurements and starts the optimization approach only if the new dat...
We consider distributed multitask learning problems over a network of agents where each agent is int...
Markov networks are widely used in a wide variety of applications, in problems ranging from computer...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
Several adaptations of maximum likelihood approaches to incremental map learning have been proposed ...
Abstract — In 2006, Olson et al. presented a novel approach to address the graph-based simultaneous ...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
In this paper we introduce a new optimization algorithm for networks of switched nonlinear objective...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
Stochastic algorithms for solving constraint satisfaction problems with soft constraints that can be...
Abstract. Stochastic algorithms for solving constraint satisfaction problems with soft constraints t...
Researchers describe a newly-developed artificial neural network algorithm for solving constraint sa...
Learning maps is one of the fundamental tasks of mobile robots. In the past, numerous efficient appr...
This thesis is mostly focused on reinforcement learning, which is viewed as an optimization problem:...
We consider distributed multitask learning problems over a network of agents where each agent is int...
Markov networks are widely used in a wide variety of applications, in problems ranging from computer...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Abstract — Learning models of the environment is one of the fundamental tasks of mobile robots since...
Learning models of the environment is one of the fundamental tasks of mobile robots since maps are n...
Several adaptations of maximum likelihood approaches to incremental map learning have been proposed ...
Abstract — In 2006, Olson et al. presented a novel approach to address the graph-based simultaneous ...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
In this paper we introduce a new optimization algorithm for networks of switched nonlinear objective...
We consider the problem of a learning mechanism (for example, a robot) locating a point on a line wh...
Stochastic algorithms for solving constraint satisfaction problems with soft constraints that can be...
Abstract. Stochastic algorithms for solving constraint satisfaction problems with soft constraints t...
Researchers describe a newly-developed artificial neural network algorithm for solving constraint sa...
Learning maps is one of the fundamental tasks of mobile robots. In the past, numerous efficient appr...
This thesis is mostly focused on reinforcement learning, which is viewed as an optimization problem:...
We consider distributed multitask learning problems over a network of agents where each agent is int...
Markov networks are widely used in a wide variety of applications, in problems ranging from computer...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...