In this work, we proposed to use the Zoomed Ranking approach to rank and select time series models. Zoomed Ranking, originally proposed to generate a ranking of candidate algorithms, is employed to solve a given classification problem based on performance information from previous problems. The problem of model selection in Zoomed Ranking was solved in two distinct phases. In the first phase, we selected a subset of problems from the instances base that were similar to the new problem at hand. This selection is made using the k-Nearest Neighbor algorithm, whose distance function uses the characteristics of the series. In the second phase, the ranking of candidate models was generated based on performance information (accuracy and execution ...
The selective pattern matching method for forecasting the increment signs of financial time series i...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Many applications of analysis of ranking data arise from different fields of study, such as psycholo...
One of the challenging questions in time series forecasting is how to find the best algorithm. In re...
International audienceAn increasing number of applications require to recognize the class of an inco...
Abstract. Metric-based methods, which use unlabeled data to detect gross dif-ferences in behavior aw...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
In recent years, artificial neural networks have been used for time series forecasting. Determining ...
Model selection is often conducted by ranking models by their out-of-sample forecast error. Such cri...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
Time series model selection has been widely studied in recent years. It is of importance to select t...
A number of studies in the last couple of decades has attempted to find, in terms of postsample accu...
International audienceObserving a stationary time series, we propose a two-step procedure for the pr...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
The selective pattern matching method for forecasting the increment signs of financial time series i...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Many applications of analysis of ranking data arise from different fields of study, such as psycholo...
One of the challenging questions in time series forecasting is how to find the best algorithm. In re...
International audienceAn increasing number of applications require to recognize the class of an inco...
Abstract. Metric-based methods, which use unlabeled data to detect gross dif-ferences in behavior aw...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Time series forecasting has become a common problem in day-to-day applications and various machine l...
In recent years, artificial neural networks have been used for time series forecasting. Determining ...
Model selection is often conducted by ranking models by their out-of-sample forecast error. Such cri...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
Time series model selection has been widely studied in recent years. It is of importance to select t...
A number of studies in the last couple of decades has attempted to find, in terms of postsample accu...
International audienceObserving a stationary time series, we propose a two-step procedure for the pr...
The development of accurate forecasting systems for real-world time series modeling is a challenging...
The selective pattern matching method for forecasting the increment signs of financial time series i...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Many applications of analysis of ranking data arise from different fields of study, such as psycholo...