Time series data is an important data type in many different application scenarios. Consequently, there are a great variety of approaches for analyzing time series data. Within these approaches different strategies for cleaning, segmenting, representing, normalizing, comparing, and aggregating time series data can be found. When combining these operations, the time series analysis preprocessing workflow has many degrees of freedom. To define an appropriate preprocessing pipeline, the knowledge of experts coming from the application domain has to be included into the design process. Unfortunately, these experts often cannot estimate the effects of the chosen preprocessing algorithms and their parameterizations on the time series. We introduc...
The analysis of time-dependent data is an important problem in many application domains, and interac...
Widespread interest in discovering features and trends in time- series has generated a need for tool...
The need for pattern discovery in long time series data led researchers to develop algorithms for si...
Time series data is an important data type in many different application scenarios. Consequently, th...
Pre-processing is a prerequisite to conduct effective and efficient downstream data analysis. Pre-pr...
International audienceVisual representations of time-series are useful for tasks such as identifying...
Event sequences and time series are widely recorded in many application domains; examples are stock ...
The need for pattern discovery in long time series data led researchers to develop algorithms for si...
The increasing interest in time series data mining in the last decade has resulted in the introducti...
The analysis of time-dependent data is an important problem in many application domains, and interac...
\u3cp\u3eEvent sequences and time series are widely recorded in many application domains; examples a...
Time is an important data dimension with distinct characteristics that is common across many applica...
The increasing interest in time series data mining has had surprisingly little impact on real world ...
The analysis of time-dependent data is an important problem in many application domains, and interac...
The analysis of time-dependent data is an important problem in many application domains, and interac...
The analysis of time-dependent data is an important problem in many application domains, and interac...
Widespread interest in discovering features and trends in time- series has generated a need for tool...
The need for pattern discovery in long time series data led researchers to develop algorithms for si...
Time series data is an important data type in many different application scenarios. Consequently, th...
Pre-processing is a prerequisite to conduct effective and efficient downstream data analysis. Pre-pr...
International audienceVisual representations of time-series are useful for tasks such as identifying...
Event sequences and time series are widely recorded in many application domains; examples are stock ...
The need for pattern discovery in long time series data led researchers to develop algorithms for si...
The increasing interest in time series data mining in the last decade has resulted in the introducti...
The analysis of time-dependent data is an important problem in many application domains, and interac...
\u3cp\u3eEvent sequences and time series are widely recorded in many application domains; examples a...
Time is an important data dimension with distinct characteristics that is common across many applica...
The increasing interest in time series data mining has had surprisingly little impact on real world ...
The analysis of time-dependent data is an important problem in many application domains, and interac...
The analysis of time-dependent data is an important problem in many application domains, and interac...
The analysis of time-dependent data is an important problem in many application domains, and interac...
Widespread interest in discovering features and trends in time- series has generated a need for tool...
The need for pattern discovery in long time series data led researchers to develop algorithms for si...