The error-bounded Piecewise Linear Approximation (PLA) is to approximate the stream data by lines such that the approximation error at each point does not exceed a pre-defined error. In this paper, we focus on the version of PLA problem that generates connected lines in the segmentation for smooth approximation. We provide a new linear-time algorithm for the problem that outperform two of the existing methods with less number of connected segments. Our extensive experiments, on both real and synthetic data sets, indicate that our proposed algorithms are practically efficient
International audienceOptimum curve segmentation problems typically arise when analyzing data repres...
The signal segmentation approach described herein assumes that the signal can be accurately modelled...
Several improvements have been done in time series classification over the last decade. One of the b...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
Time series are difficult to monitor, summarize and predict. Segmentation organizes time series into...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
Proceedings of: Forth International Workshop on User-Centric Technologies and applications (CONTEXTS...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
This paper proposes a new algorithm,named as the improved bottom-up algorithm,to approximate time se...
. Piecewise linear models are attractive when modeling a wide range of nonlinear phenomena but deter...
Abstract:A criteria is developed for the approximations of a logarithmic function to piecewise strai...
AbstractOptimum curve segmentation problems typically arise when analyzing data represented by curve...
We consider a new combinatorial optimization problem related to linear systems (MIN PFS) that consis...
Two fast algorithms for solving the piecewise linear L 1, approximation problem of plane curves are ...
We consider least-squares approximation of a function of one variable by a continuous, piecewise-lin...
International audienceOptimum curve segmentation problems typically arise when analyzing data repres...
The signal segmentation approach described herein assumes that the signal can be accurately modelled...
Several improvements have been done in time series classification over the last decade. One of the b...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
Time series are difficult to monitor, summarize and predict. Segmentation organizes time series into...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
Proceedings of: Forth International Workshop on User-Centric Technologies and applications (CONTEXTS...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
This paper proposes a new algorithm,named as the improved bottom-up algorithm,to approximate time se...
. Piecewise linear models are attractive when modeling a wide range of nonlinear phenomena but deter...
Abstract:A criteria is developed for the approximations of a logarithmic function to piecewise strai...
AbstractOptimum curve segmentation problems typically arise when analyzing data represented by curve...
We consider a new combinatorial optimization problem related to linear systems (MIN PFS) that consis...
Two fast algorithms for solving the piecewise linear L 1, approximation problem of plane curves are ...
We consider least-squares approximation of a function of one variable by a continuous, piecewise-lin...
International audienceOptimum curve segmentation problems typically arise when analyzing data repres...
The signal segmentation approach described herein assumes that the signal can be accurately modelled...
Several improvements have been done in time series classification over the last decade. One of the b...