We present an EM-algorithm for the problem of learning preferences with semiparametric models derived from Gaussian processes in the context of multi-task learning. We validate our approach on an audiological data set and show that predictive results for sound quality perception of hearing-impaired subjects, in the context of pairwise comparison experiments, can be improved using a hierarchical model
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
Bayesian approaches to preference learning using Gaussian Processes (GPs) are attractive due to thei...
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
A probabilistic kernel approach to pairwise preference learning based on Gaussian processes is appli...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
Contains fulltext : 72737.pdf (preprint version ) (Open Access)19 p
Contains fulltext : 83902.pdf (preprint version ) (Open Access)9 p
In this work, we study the problem of user preference learning on the example of parameter setting f...
This study investigated a method to adjust hearing-aid gain by use of a machine-learning algorithm t...
ABSTRACT We describe a Learning Volume Control (LVC) algorithm that learns the volume control operat...
We describe a Learning Volume Control (LVC) algorithm that learns the volume control operations of a...
The present invention relates to a new method for effective estimation of signal processing paramete...
We present a new model based on Gaussian processes (GPs) for learning pair-wise preferences expresse...
This thesis makes initial explorations with the idea of modelling, and thus being able to predict - ...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
Bayesian approaches to preference learning using Gaussian Processes (GPs) are attractive due to thei...
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
A probabilistic kernel approach to pairwise preference learning based on Gaussian processes is appli...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
Contains fulltext : 72737.pdf (preprint version ) (Open Access)19 p
Contains fulltext : 83902.pdf (preprint version ) (Open Access)9 p
In this work, we study the problem of user preference learning on the example of parameter setting f...
This study investigated a method to adjust hearing-aid gain by use of a machine-learning algorithm t...
ABSTRACT We describe a Learning Volume Control (LVC) algorithm that learns the volume control operat...
We describe a Learning Volume Control (LVC) algorithm that learns the volume control operations of a...
The present invention relates to a new method for effective estimation of signal processing paramete...
We present a new model based on Gaussian processes (GPs) for learning pair-wise preferences expresse...
This thesis makes initial explorations with the idea of modelling, and thus being able to predict - ...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
Pure-tone audiometry—the process of estimating a person's hearing threshold from “audible” and “inau...
Bayesian approaches to preference learning using Gaussian Processes (GPs) are attractive due to thei...