Multivariate discretization for Bayesian Network structure learning in robot grasping

ICRA(2011)

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摘要
A major challenge in modeling with BNs is learning the structure from both discrete and multivariate continuous data. A common approach in such situations is to discretize continuous data before structure learning. However efficient methods to discretize high-dimensional variables are largely lacking. This paper presents a novel method specifically aiming at discretization of high-dimensional, high-correlated data. The method consists of two integrated steps: non-linear dimensionality reduction using sparse Gaussian process latent variable models, and discretization by application of a mixture model. The model is fully probabilistic and capable to facilitate structure learning from discretized data, while at the same time retain the continuous representation. We evaluate the effectiveness of the method in the domain of robot grasping. Compared with traditional discretization schemes, our model excels both in task classification and prediction of hand grasp configurations. Further, being a fully probabilistic model it handles uncertainty in the data and can easily be integrated into other frameworks in a principled manner.
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关键词
task prediction,nonlinear dimensionality reduction,bayes methods,learning (artificial intelligence),task analysis,dexterous manipulators,discretize continuous data,latent variable models,robot grasping,sparse gaussian process,task classification,uncertainty handling,gaussian processes,structure learning,bayesian network,gaussian mixture model,probability,probabilistic model,data model,feature extraction,principal component analysis,learning artificial intelligence,computer and information science,data models
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