projnormal.formulas.projected_normal_c
Formulas for the distribution of \(y=x/\sqrt{\|x\|^2 + c}\).
- empirical_moments(mean_x, covariance_x, const, n_samples)
Compute the mean, covariance and second moment of the variable \(y = x/\sqrt{x^T x + c}\) where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a positive constant added to the denominator, by sampling from the distribution.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).const (
torch.Tensor) – Constant added to the denominator. Shape is().n_samples (
int) – Number of samples to draw.
- Returns:
Dictionary with the keys
mean,covariance, andsecond_moment, containing the empirical moments of the projected normal distribution.- Return type:
dict
- log_pdf(mean_x, covariance_x, const, y)
Compute the log-pdf at points y for the distribution of the variable \(y = x/\sqrt{x^T x + c}\), where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a positive constant.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).y (
torch.Tensor) – Points where to evaluate the PDF. Shape is(n_points, n_dim).const (
torch.Tensor) – Constant added to the denominator. Must be positive. Shape is().
- Returns:
Log-PDF evaluated at each y. Shape is
(n_points,).- Return type:
torch.Tensor
- mean(mean_x, covariance_x, const=0)
Compute the mean of \(y = x/\sqrt{x^T x + c}\), where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a positive constant. Uses a Taylor approximation.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).const (
torch.Tensor) – Constant added to the denominator. Shape is().
- Returns:
Expected value for the projected normal on ellipse. Shape is
(n_dim,).- Return type:
torch.Tensor
- pdf(mean_x, covariance_x, const, y)
Compute the pdf at points y for the distribution of the variable \(y = x/\sqrt{x^T x + c}\), where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a positive constant.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).y (
torch.Tensor) – Points where to evaluate the PDF. Shape is(n_points, n_dim).const (
torch.Tensor) – Constant added to the denominator. Must be positive. Shape is().
- Returns:
PDF evaluated at each y. Shape is
(n_points,).- Return type:
torch.Tensor
- sample(mean_x, covariance_x, const, n_samples)
Sample the variable \(y = x/\sqrt{x^T x + c}\) where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a constant added to the denominator.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).const (
torch.Tensor) – Constant added to the denominator. Shape is().n_samples (
int) – Number of samples to draw.
- Returns:
Samples from the distribution. Shape is
(n_samples, n_dim).- Return type:
torch.Tensor
- second_moment(mean_x, covariance_x, const)
Compute the second moment matrix of \(y = x/\sqrt{x^T x + c}\), where \(x \sim \mathcal{N}(\mu_x, \Sigma_x)\) and \(c\) is a positive constant. Uses a Taylor approximation.
- Parameters:
mean_x (
torch.Tensor) – Mean of x. Shape is(n_dim,).covariance_x (
torch.Tensor) – Covariance of x. Shape is(n_dim, n_dim).const (
torch.Tensor) – Constant added to the denominator. Shape is().
- Returns:
Second moment matrix of \(y\). Shape is
(n_dim, n_dim).- Return type:
torch.Tensor
Modules
Approximation to the moments of the general projected normal distribution with additive const term in denominator. |
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Probability density function (PDF) for the general projected normal distribution with an additive constant const in the denominator . |
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Sampling functions for the general projected normal distribution with an additive constant const in the denominator. |