It is well known that any kind of time series algorithm requires past information to model the inherent temporal relationship between past and future. This temporal dependency (i.e. number of past samples required for a good prediction) is generally addressed by feeding a number of past instances to the model in an empirical manner. Conventional approaches mostly rely on offline model, making them impractical to be adopted in the online or streaming context. Hence, a novel method of online temporality analysis is proposed in this paper. The estimated temporality is then employed to form an Adaptive Temporal Neural Network (ATNN) with an elastic memory capable of automatically selecting number of past samples to be used. Temporality change o...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
Yusoff M-H, Jin Y. Modeling neural plasticity in echo state networks for time series prediction. In:...
In this thesis, we develop a collection of state-of-the-art deep learning models for time series for...
Online time series prediction is the mainstream method in a wide range of fields, ranging from speec...
Time series modelling/ forecasting is one of the most popular areas of research in the machine lear...
In recent years, dynamic time series analysis with the concept drift has become an important and cha...
Over the years, and with the emergence of various technological innovations, the relevance of automa...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
The problem of forecasting streaming datasets, particularly the financial time series, has been larg...
Time series are ubiquitous in nature and human society. Especially, the forecasting of time series c...
Nature brings time series data everyday and everywhere, for example, weather data, physiological sig...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
Yusoff M-H, Jin Y. Modeling neural plasticity in echo state networks for time series prediction. In:...
In this thesis, we develop a collection of state-of-the-art deep learning models for time series for...
Online time series prediction is the mainstream method in a wide range of fields, ranging from speec...
Time series modelling/ forecasting is one of the most popular areas of research in the machine lear...
In recent years, dynamic time series analysis with the concept drift has become an important and cha...
Over the years, and with the emergence of various technological innovations, the relevance of automa...
The problem of forecasting a time series with a neural network is well-defined when considering a si...
Because of its high dimensionality, complex dynamics and irregularity, forecasting of time series da...
Time series are everywhere and exist in a wide range of domains. Electrical activities of manufactur...
ABSTRACT This paper presents an study about a new Hybrid method -GRASPES -for time series prediction...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
The problem of forecasting streaming datasets, particularly the financial time series, has been larg...
Time series are ubiquitous in nature and human society. Especially, the forecasting of time series c...
Nature brings time series data everyday and everywhere, for example, weather data, physiological sig...
Time Series Forecasting is vital for wide range of domains such as financial market forecasting, ear...
Yusoff M-H, Jin Y. Modeling neural plasticity in echo state networks for time series prediction. In:...
In this thesis, we develop a collection of state-of-the-art deep learning models for time series for...