International audienceThis paper proposes an extension of classification trees to time series input variables. A new split criterion based on time series proximities is introduced. First, the criterion relies on an adaptive (i.e., parameterized) time series metric to cover both behaviors and values proximities. The metrics parameters may change from one internal node to another to achieve the best bisection of the set of time series. Second, the criterion involves the automatic extraction of the most discriminating subsequences. The proposed time series classification tree is applied to a wide range of datasets: public and new, real and synthetic, univariate and multivariate data. We show, through the experiments performed in this study, th...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
Time series classification (TSC) is a significant problem in data mining with several applications i...
Time series are very common in presenting collected data such as economic indicators, natural phenom...
PosterNational audienceThis paper proposes an extension of the classification trees to time series i...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
This paper proposes a novel decision tree for a data set with time-series attributes. Our time-serie...
We propose a new splitting approach to extend the decision trees to temporal data. The proposed spli...
This work presents decision trees adequate for the classification of series data. There are several ...
Temporal information plays a very important role in many analysis tasks, and can be encoded in at le...
Time series play a major role in many analysis tasks. As an example, in the stock market, they can ...
The focus of this thesis is on the classification methods of time series, including clustering and d...
peer reviewedThis paper presents a novel, generic, scalable, autonomous, and flexible supervised lea...
This paper describes the methods used for our submission to the KDD 2007 Challenge on Time Series Cl...
Time series are very common in presenting collected data such as economic indicators, natural phenom...
This thesis develops scalable algorithms and techniques to classify large amount of time series data...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
Time series classification (TSC) is a significant problem in data mining with several applications i...
Time series are very common in presenting collected data such as economic indicators, natural phenom...
PosterNational audienceThis paper proposes an extension of the classification trees to time series i...
In the last years, there is a huge increase of interest in application of time series. Virtually all...
This paper proposes a novel decision tree for a data set with time-series attributes. Our time-serie...
We propose a new splitting approach to extend the decision trees to temporal data. The proposed spli...
This work presents decision trees adequate for the classification of series data. There are several ...
Temporal information plays a very important role in many analysis tasks, and can be encoded in at le...
Time series play a major role in many analysis tasks. As an example, in the stock market, they can ...
The focus of this thesis is on the classification methods of time series, including clustering and d...
peer reviewedThis paper presents a novel, generic, scalable, autonomous, and flexible supervised lea...
This paper describes the methods used for our submission to the KDD 2007 Challenge on Time Series Cl...
Time series are very common in presenting collected data such as economic indicators, natural phenom...
This thesis develops scalable algorithms and techniques to classify large amount of time series data...
peer reviewedIn this paper, we propose some new tools to allow machine learning classifiers to cope ...
Time series classification (TSC) is a significant problem in data mining with several applications i...
Time series are very common in presenting collected data such as economic indicators, natural phenom...