Like in our previous papers, we show the trend of seasonal time series by means of polynomial interpolation and we use the inverse fuzzy transform for prediction of the value of an assigned output. As example, we use the daily weather dataset of the city of Naples (Italy) starting from data collected from 2003 till to 2015 making predictions on the the relative humidity parameter. We compare our method with the traditional F-transform based, the average seasonal variation and the famous ARIMA methods
[[abstract]]In this paper, we propose a new residual analysis method using Fourier series transform ...
This paper describes a variation of data cloud-based intelligent method known as typicality-and-ecce...
Abstract. In this paper, we propose a new residual analysis method using Fourier series transform in...
Like in our previous papers, we show the trend of seasonal time series by means of polynomial inter...
We define a new seasonal forecasting method based on fuzzy transforms. We use the best interpolating...
In this paper, we will focus on the application of fuzzy transform (F-transform) in the analysis of ...
Fuzzy time series forecasting methods, which have been widely studied in recent years, do not requir...
Fuzzy time series is a useful alternative to conventional time series methods especially when there ...
Fuzzy time series forecasting methods, which have been widely studied in recent years, do not requir...
[[abstract]]This paper proposes a decomposed fuzzy exponential smoothing model to analyze the season...
We present a prediction method based on Fuzzy Transforms to determine a mapping from the input-varia...
Abstract: Problem statement: In the literature, the most studied of fuzzy time series for the purpos...
There have been many recently proposed methods for forecasting fuzzy time series. Most of them are, ...
Abstract—A drawback of traditional forecasting methods is that they can not deal with forecasting pr...
Abstract — A new methodology for analysis and forecasting of time series is proposed. It directly em...
[[abstract]]In this paper, we propose a new residual analysis method using Fourier series transform ...
This paper describes a variation of data cloud-based intelligent method known as typicality-and-ecce...
Abstract. In this paper, we propose a new residual analysis method using Fourier series transform in...
Like in our previous papers, we show the trend of seasonal time series by means of polynomial inter...
We define a new seasonal forecasting method based on fuzzy transforms. We use the best interpolating...
In this paper, we will focus on the application of fuzzy transform (F-transform) in the analysis of ...
Fuzzy time series forecasting methods, which have been widely studied in recent years, do not requir...
Fuzzy time series is a useful alternative to conventional time series methods especially when there ...
Fuzzy time series forecasting methods, which have been widely studied in recent years, do not requir...
[[abstract]]This paper proposes a decomposed fuzzy exponential smoothing model to analyze the season...
We present a prediction method based on Fuzzy Transforms to determine a mapping from the input-varia...
Abstract: Problem statement: In the literature, the most studied of fuzzy time series for the purpos...
There have been many recently proposed methods for forecasting fuzzy time series. Most of them are, ...
Abstract—A drawback of traditional forecasting methods is that they can not deal with forecasting pr...
Abstract — A new methodology for analysis and forecasting of time series is proposed. It directly em...
[[abstract]]In this paper, we propose a new residual analysis method using Fourier series transform ...
This paper describes a variation of data cloud-based intelligent method known as typicality-and-ecce...
Abstract. In this paper, we propose a new residual analysis method using Fourier series transform in...