Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the social sciences, but they have been largely overlooked by the machine learning community. This paper partially redresses this imbalance by extending some standard probabilistic modelling tools to the circular domain. First we introduce a new multivariate distribution over circular variables, called the multivariate Generalised von Mises (mGvM) distribution. This distribution can be constructed by restricting and renormalising a general multivariate Gaussian distribution to the unit hyper-torus. Previously proposed multivariate circular distributions are shown to be special cases of this construction. Second, we introduce a new probabilistic model...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Regularization is necessary to avoid overfitting when the number of data samples is low compared to...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
Motivated by problems of modelling torsional angles in molecules, Singh, Hnizdo & Demchuk (2002) pro...
Motivated by problems of modeling torsional angles in molecules, Singh et al. (2002) proposed a biva...
Most of the tractable distributions currently available for modeling circular data are symmetric aro...
We propose a family of four-parameter distributions on the circle that contains the von Mises and wr...
A regression model for correlated circular data is proposed by assuming that samples of angular me...
http://deepblue.lib.umich.edu/bitstream/2027.42/35536/2/b1892976.0001.001.pdfhttp://deepblue.lib.umi...
One approach to defining models for circular data and processes has been to take a standard Euclidea...
A generalization of the von Mises distribution, which is broad enough to cover unimodality as well a...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Regularization is necessary to avoid overfitting when the number of data samples is low compared to...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Circular variables arise in a multitude of data-modelling contexts ranging from robotics to the soci...
Motivated by a study from cognitive psychology, we develop a Generalized Linear Model for circular d...
Circular data are data measured in angles or directions. Although they occur in a wide variety of sc...
Motivated by problems of modelling torsional angles in molecules, Singh, Hnizdo & Demchuk (2002) pro...
Motivated by problems of modeling torsional angles in molecules, Singh et al. (2002) proposed a biva...
Most of the tractable distributions currently available for modeling circular data are symmetric aro...
We propose a family of four-parameter distributions on the circle that contains the von Mises and wr...
A regression model for correlated circular data is proposed by assuming that samples of angular me...
http://deepblue.lib.umich.edu/bitstream/2027.42/35536/2/b1892976.0001.001.pdfhttp://deepblue.lib.umi...
One approach to defining models for circular data and processes has been to take a standard Euclidea...
A generalization of the von Mises distribution, which is broad enough to cover unimodality as well a...
Circular data are encountered in a variety of fields. A dataset on music listening behaviour through...
The von Mises distribution is often useful for modelling circular data problems. We consider a model...
Regularization is necessary to avoid overfitting when the number of data samples is low compared to...