We consider the problem of approximating a signal P with another signal F consisting of a few piecewise constant segments. This problem arises naturally in applications including databases (e.g., histogram construction), speech recognition, computational biology (e.g., denoising aCGH data) and many more. Specifically, let P = (P1, P2, …, Pn), Pi ∊ ℝ for all i, be a signal and let C be a constant. Our goal is to find a function F : [n] → ℝ which optimizes the following objective function: The above optimization problem reduces to solving the following recurrence, which can be done using dynamic programming in O(n2) time: This recurrence arises naturally in several applications where one wants to approximate a given signal P wit...
Many common approaches to detecting changepoints, for example based on statistical criteria such as ...
We address the problem of automatically constructing basis functions for linear approxim...
We consider dynamic programming solutions to a number of different recurrences for sequence comparis...
AbstractConsider the problem of computing E[j]=min0⩽k⩽j−1 {D[k]+w(k,j)},j=1,…,n, where w is a given ...
Dynamic programming solutions to a number of different recurrence equations for sequence comparison ...
Existing dynamic-programming algorithms for identifying similar regions of two sequences require tim...
The theory of compressive sensing (CS) suggests that under certain conditions, a sparse signal can b...
The least weight subsequence problem is a special case of the one-dimensional dynamic programming pr...
Abstract—The theory of compressive sensing (CS) has shown us that under certain conditions, a sparse...
The problem of dividing a sequence of values into segments occurs in database systems, information r...
We cover two topics in the broad area of nonlinear multiscale methods. In the first topic, we develo...
International audienceThe paper focuses on the sparse approximation of signals using overcomplete re...
We describe a dynamic data structure for approximate nearest neighbor (ANN) queries with respect to ...
The paper focuses on the sparse approximation of signals using overcomplete representations, such th...
Several key problems in machine learning, such as feature selection and active learning, can be form...
Many common approaches to detecting changepoints, for example based on statistical criteria such as ...
We address the problem of automatically constructing basis functions for linear approxim...
We consider dynamic programming solutions to a number of different recurrences for sequence comparis...
AbstractConsider the problem of computing E[j]=min0⩽k⩽j−1 {D[k]+w(k,j)},j=1,…,n, where w is a given ...
Dynamic programming solutions to a number of different recurrence equations for sequence comparison ...
Existing dynamic-programming algorithms for identifying similar regions of two sequences require tim...
The theory of compressive sensing (CS) suggests that under certain conditions, a sparse signal can b...
The least weight subsequence problem is a special case of the one-dimensional dynamic programming pr...
Abstract—The theory of compressive sensing (CS) has shown us that under certain conditions, a sparse...
The problem of dividing a sequence of values into segments occurs in database systems, information r...
We cover two topics in the broad area of nonlinear multiscale methods. In the first topic, we develo...
International audienceThe paper focuses on the sparse approximation of signals using overcomplete re...
We describe a dynamic data structure for approximate nearest neighbor (ANN) queries with respect to ...
The paper focuses on the sparse approximation of signals using overcomplete representations, such th...
Several key problems in machine learning, such as feature selection and active learning, can be form...
Many common approaches to detecting changepoints, for example based on statistical criteria such as ...
We address the problem of automatically constructing basis functions for linear approxim...
We consider dynamic programming solutions to a number of different recurrences for sequence comparis...