The increasing use of sensor technology for various monitoring applications (e.g. air-pollution, traffic, climate-change, etc.) has led to an unprecedented volume of streaming data that has to be efficiently stored and retrieved. Real-time model-based data approximation and filtering is a common solution for reducing the storage (and communication) overhead. However, the selection of the most efficient model depends on the characteristics of the data stream, namely rate, burstiness, data range, etc., which cannot be always known a priori for mobile sensors and they can even be dynamic. In this paper, we investigate the innovative concept of efficiently combining multiple approximation models in real-time. Our approach dynamically adapts to ...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...
Traditional historical data analytics is at risk in a world where volatility, uncertainty, complexit...
The past decade has seen a wealth of research on time series representations, because the manipulati...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
© 2012 Zhenghua XuIn recent years, there are rapidly increasing research interests in the management...
Ph. D. ThesisUbiquitous cheap processing power and reduced storage costs have led to increased deplo...
Declarative queries are proving to be an attractive paradigm for interacting with networks of wirele...
In recent years we are experiencing a dramatic increase in the amount of available time-series data....
With the emergence of the Internet of Things (IoT), time series streams have become ubiquitous in ou...
With the growing popularity of information and communications technologies and information sharing a...
In the time-decay model for data streams, elements of an underlying data set arrive sequentially wit...
peer reviewedInternet of Things applications analyze our past habits through sensor measures to anti...
As advances in science and technology have continually increased the existence of, and capability fo...
Nowadays online monitoring of data streams is essential in many real life applications, like sensor ...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...
Traditional historical data analytics is at risk in a world where volatility, uncertainty, complexit...
The past decade has seen a wealth of research on time series representations, because the manipulati...
Abstract The volume of time series stream data grows rapidly in various applications. To reduce the ...
© 2012 Zhenghua XuIn recent years, there are rapidly increasing research interests in the management...
Ph. D. ThesisUbiquitous cheap processing power and reduced storage costs have led to increased deplo...
Declarative queries are proving to be an attractive paradigm for interacting with networks of wirele...
In recent years we are experiencing a dramatic increase in the amount of available time-series data....
With the emergence of the Internet of Things (IoT), time series streams have become ubiquitous in ou...
With the growing popularity of information and communications technologies and information sharing a...
In the time-decay model for data streams, elements of an underlying data set arrive sequentially wit...
peer reviewedInternet of Things applications analyze our past habits through sensor measures to anti...
As advances in science and technology have continually increased the existence of, and capability fo...
Nowadays online monitoring of data streams is essential in many real life applications, like sensor ...
© 2009 Pu ZhouThe huge volume of time series data generated in many applications poses new challenge...
This paper describes our work in learning on-line models that forecast real-valued variables in a hi...
Traditional historical data analytics is at risk in a world where volatility, uncertainty, complexit...
The past decade has seen a wealth of research on time series representations, because the manipulati...