We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and the number of features may be high we resort to a Bayesian approach for sparse linear regression that can deal with many features, in order to find efficient representations for on-line usage. We compare to a heuristic feature selection approach that we optimized for speed. Results on synthetic data with irrelevant and redundant features indicate that Bayesian backfitting has labelling accuracy comparable to the heuristic approach (for moderate sample sizes), but takes much larger training times. We then determine features for hearing aid personalization by applying the method to hearing aid preference data
The traditional hearing aid fitting method, which mainly relies on the audiologist, is timeconsuming...
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
Modern hearing aids can vary in both digital signal processing (DSP) and non-signal processing (non-...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Medical devices such as hearing aids often contain many tunable parameters. The optimal setting of t...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
The present invention relates to a new method for effective estimation of signal processing paramete...
Noisy environments, changes and variations in the volume of speech, and non-face-to-face conversatio...
Presented is a comparative study of two machine learning models (MLP Neural Network and Bayesian Net...
Presented is a comparative study of two machine learning models (MLP Neural Network and Bayesian Net...
In this work, we study the problem of user preference learning on the example of parameter setting f...
Effective noise reduction and speech enhancement algorithms have great potential to enhance lives of...
Hearing aids are controlled by numerous parameters, presenting the audiologist with a difficult fitt...
The traditional hearing aid fitting method, which mainly relies on the audiologist, is timeconsuming...
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
Modern hearing aids can vary in both digital signal processing (DSP) and non-signal processing (non-...
We formulate hearing aid personalization as a linear regression. Since sample sizes may be low and t...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Online personalization of hearing instruments refers to learning preferred tuning parameter values f...
Medical devices such as hearing aids often contain many tunable parameters. The optimal setting of t...
Given a sound library, a sound sample and two parameter settings are se-lected to generate two heari...
The present invention relates to a new method for effective estimation of signal processing paramete...
Noisy environments, changes and variations in the volume of speech, and non-face-to-face conversatio...
Presented is a comparative study of two machine learning models (MLP Neural Network and Bayesian Net...
Presented is a comparative study of two machine learning models (MLP Neural Network and Bayesian Net...
In this work, we study the problem of user preference learning on the example of parameter setting f...
Effective noise reduction and speech enhancement algorithms have great potential to enhance lives of...
Hearing aids are controlled by numerous parameters, presenting the audiologist with a difficult fitt...
The traditional hearing aid fitting method, which mainly relies on the audiologist, is timeconsuming...
We present an EM-algorithm for the problem of learning preferences with semiparametric models derive...
Modern hearing aids can vary in both digital signal processing (DSP) and non-signal processing (non-...