Research on forecasting has traditionally focused on building more accurate statistical models for a given time series. The models are mostly applied to limited data due to efficiency and scalability problems. However, many enterprise applications require scalable forecasting on large number of data series. For example, telecommunication companies need to forecast each of their customers’ traffic load to understand their usage behavior and to tailor targeted campaigns. Forecasting models are typically applied on aggregate data to estimate the total traffic volume for revenue estimation and resource planning. However, they cannot be easily applied to each user individually as building accurate models for large number of users would be time c...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
Forecasting time series data is an integral component for management, planning and decision making. ...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
Research on forecasting has traditionally focused on building more accurate statistical models for a...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Time series forecasting is challenging as sophisticated forecast models are computationally expensiv...
Time series forecasting is challenging as sophisticated forecast models are computationally expensiv...
Time series prediction plays a pivotal role in various areas, including for example finance, weather...
We develop an innovative data preprocessing algorithm for classifying customers using unbalanced tim...
Abstract—Forecasting accurately is essential to successful in-ventory planning in retail. Unfortunat...
International audienceIn the context of capacity planning, forecasting the evolution of informatics ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
Forecasting time series data is an integral component for management, planning and decision making. ...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...
Research on forecasting has traditionally focused on building more accurate statistical models for a...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
This paper presents a new method for forecasting a load of individual electricity consumers using sm...
Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom...
Forecasting large numbers of time series is a costly and time-consuming exercise. Before forecasting...
Time series forecasting is challenging as sophisticated forecast models are computationally expensiv...
Time series forecasting is challenging as sophisticated forecast models are computationally expensiv...
Time series prediction plays a pivotal role in various areas, including for example finance, weather...
We develop an innovative data preprocessing algorithm for classifying customers using unbalanced tim...
Abstract—Forecasting accurately is essential to successful in-ventory planning in retail. Unfortunat...
International audienceIn the context of capacity planning, forecasting the evolution of informatics ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
Forecasting time series data is an integral component for management, planning and decision making. ...
Linear and nonlinear models for time series analysis and prediction are well-established. Clustering...