Title :
Incorporating prior knowledge into nonparametric conditional density estimation
Author :
Krauthausen, P. ; Roschani, M. ; Hanebeck, U.D.
Author_Institution :
Intell. Sensor-Actuator-Syst. Lab. (ISAS), Karlsruhe Inst. of Technol., Karlsruhe, Germany
fDate :
June 29 2011-July 1 2011
Abstract :
In this paper, the problem of sparse nonparametric conditional density estimation based on samples and prior knowledge is addressed. The prior knowledge may be restricted to parts of the state space and given as generative models in form of mean-function constraints or as probabilistic models in the form of Gaussian mixture densities. The key idea is the introduction of additional constraints and a modified kernel function into the conditional density estimation problem. This approach to using prior knowledge is applicable to all nonparametric conditional density estimation approaches phrased as constrained optimization problems. The quality of the estimates, their sparseness, and the achievable improvements by using prior knowledge are shown in experiments for both Support-Vector Machine-based and integral distance based conditional density estimation algorithms.
Keywords :
Gaussian processes; optimisation; Gaussian mixture density; constrained optimization problem; integral distance; kernel function; mean-function constraint; nonparametric conditional density estimation problem; prior knowledge; support vector machine; Encoding; Estimation; Kernel; Optimization; Probabilistic logic; Robots; Training;
Conference_Titel :
American Control Conference (ACC), 2011
Conference_Location :
San Francisco, CA
Print_ISBN :
978-1-4577-0080-4
DOI :
10.1109/ACC.2011.5991394