When dealing with a new time series classifcation problem, modellers do not know in advance which features could enable the best classifcation performance. We propose an evolutionary algorithm based on grammatical evolution to attain a data driven feature-based representation of time series with minimal human intervention. The proposed algorithm can select both the features to extract and the sub-sequences from which to extract them. These choices not only impact classifcation perfor mance but also allow understanding of the problem at hand. The algorithm is tested on 30 problems outperforming several benchmarks. Finally, in a case study related to subject authentication, we show how features learned for a given subject are able to g...
In this paper, we propose an approach termed segment-based features (SBFs) to classify time series. ...
The means of data mining and machine learning tasks are important topics in signal processing fundam...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
peer-reviewedWhen dealing with a new time series classifcation problem, modellers do not know in a...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
This book proposes a novel approach for time-series prediction using machine learning techniques wit...
A state in time series can be referred as a certain signal pattern occurring consistently for a long...
This thesis contributes to the state of the art of time series classification and machine learning b...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
The modeling of time series is becoming increasingly critical in a wide variety of applications. Ove...
In this paper we introduce a framework for automatic feature extraction from very large series. The ...
In this paper, the use of an evolutionary approach when obtaining linguistic summaries from time se-...
Time series data, due to their numerical and continuous nature, are difficult to process, analyze, a...
A time series is a sequence of data measured at successive time intervals. Time series analysis refe...
In this paper, we propose an approach termed segment-based features (SBFs) to classify time series. ...
The means of data mining and machine learning tasks are important topics in signal processing fundam...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...
peer-reviewedWhen dealing with a new time series classifcation problem, modellers do not know in a...
Finding patterns such as increasing or decreasing trends, abrupt changes and periodically repeating ...
This book proposes a novel approach for time-series prediction using machine learning techniques wit...
A state in time series can be referred as a certain signal pattern occurring consistently for a long...
This thesis contributes to the state of the art of time series classification and machine learning b...
Time series represent the most widely spread type of data, occurring in a myriad of application doma...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
The modeling of time series is becoming increasingly critical in a wide variety of applications. Ove...
In this paper we introduce a framework for automatic feature extraction from very large series. The ...
In this paper, the use of an evolutionary approach when obtaining linguistic summaries from time se-...
Time series data, due to their numerical and continuous nature, are difficult to process, analyze, a...
A time series is a sequence of data measured at successive time intervals. Time series analysis refe...
In this paper, we propose an approach termed segment-based features (SBFs) to classify time series. ...
The means of data mining and machine learning tasks are important topics in signal processing fundam...
Time series classification (TSC) methods discover and exploit patterns in time series and other one-...