Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (error-bounded PLR) is to construct a number of consecutive line segments to approximate the stream, such that the approximation error does not exceed a prescribed error bound. In this work, we consider the error bound in L∞ norm as approximation criterion, which constrains the approximation error on each corresponding data point, and aim on designing algorithms to generate the minimal number of segments. In the literature, the optimal approximation algorithms are effectively designed based on transformed space other than time-value space, while desirable optimal solutions based on original time domain (i.e., time-value space) are still lacked. ...
Abstract: Piecewise Linear Representation has been widely used to compress online data which are col...
In this paper we introduce the notion of approximate data structures, in which a small amount of err...
We study streaming algorithms for the interval selection problem: finding a maximum car-dinality sub...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
The error-bounded Piecewise Linear Approximation (PLA) is to approximate the stream data by lines su...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
We consider computing a longest palindrome in the streaming model, where the symbols arrive one-by-o...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
\ua9 2019 Copyright held by the owner/author(s). In our digitalization era, where large and continuo...
Approximation of digital signals by means of continuous-time functions is often required in many tas...
Piecewise Linear Representation (PLR) has been a widely used method for approximating data streams i...
In this dissertation, we present algorithms that approximate properties in the data stream model, wh...
Histograms and Wavelet synopses provide useful tools in query optimization and approximate query ans...
The problem of finding heavy hitters and approximating the frequencies of items is at the heart of m...
This paper proposes a new algorithm,named as the improved bottom-up algorithm,to approximate time se...
Abstract: Piecewise Linear Representation has been widely used to compress online data which are col...
In this paper we introduce the notion of approximate data structures, in which a small amount of err...
We study streaming algorithms for the interval selection problem: finding a maximum car-dinality sub...
Given a time series data stream, the generation of error-bounded Piecewise Linear Representation (er...
The error-bounded Piecewise Linear Approximation (PLA) is to approximate the stream data by lines su...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
We consider computing a longest palindrome in the streaming model, where the symbols arrive one-by-o...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
\ua9 2019 Copyright held by the owner/author(s). In our digitalization era, where large and continuo...
Approximation of digital signals by means of continuous-time functions is often required in many tas...
Piecewise Linear Representation (PLR) has been a widely used method for approximating data streams i...
In this dissertation, we present algorithms that approximate properties in the data stream model, wh...
Histograms and Wavelet synopses provide useful tools in query optimization and approximate query ans...
The problem of finding heavy hitters and approximating the frequencies of items is at the heart of m...
This paper proposes a new algorithm,named as the improved bottom-up algorithm,to approximate time se...
Abstract: Piecewise Linear Representation has been widely used to compress online data which are col...
In this paper we introduce the notion of approximate data structures, in which a small amount of err...
We study streaming algorithms for the interval selection problem: finding a maximum car-dinality sub...