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denis
  • Member for 12 years, 4 months
  • Last seen more than a month ago
6 votes
Accepted

A good book on inverse problems for engineers

4 votes

Eigen library: spline interpolation vs spline smoothing

3 votes

Comparing two rotation matrices

2 votes

Good book for an introduction to differential equations for engineers

2 votes

Optimal step size in gradient descent

2 votes

Recover filter coefficients from filtered noise

2 votes
Accepted

Explanation of Chandrupatla's algorithm for root finding?

1 vote
Accepted

Determining the parameters of a differential equation

1 vote

Rigorous rationale for the Pade Approximant?

1 vote

Intuition for gradient descent with Nesterov momentum

1 vote

Dimensionality Reduction

1 vote

Gradient descent method with random perturbation

1 vote

Approximate a convolution as a sum of separable convolutions

1 vote

Approximating a large number of data points using (cubic) splines in l1/l2 norm.

1 vote

Unsupervised learning algorithms to detect anomaly in waves.

1 vote
Accepted

Mathematics disciplines underpinning Machine Learning

1 vote

Not understanding derivative of a matrix-matrix product.

1 vote

Why does Ridders' method work as well as it does?

1 vote

Why is the approximation of Hessian$= J^TJ$ reasonable?

1 vote

How does additive noise change the SVD

1 vote

constrained rank approximation

1 vote

Integer matrices with integer inverses

1 vote

Best way to measure the tail weight of a distribution

0 votes

Matrix Linear Least Squares Problem with Diagonal Matrix Constraint

0 votes

Is there a faster way to calculate a few diagonal elements of the inverse of a huge symmetric positive definite matrix?

0 votes

How can we find smallest singular value of Jacobian matrix of a system of nonlinear equations without finding the solution?

0 votes

Global optimization of non-smooth function

0 votes

Two-Term Exponential Curve Fitting

0 votes

A constrained gradient descent algorithm

0 votes

Regularize gradient matrix in order to preserve approximator stability.