Segmentation and labeling of different activities in multivariate time series data is an important task in many domains. There is a multitude of automatic segmentation and labeling methods available, which are designed to handle different situations. These methods can be used with multiple parametrizations, which leads to an overwhelming amount of options to choose from. To this end, we present a conceptual design of a Visual Analytics framework (1) to select appropriate segmentation and labeling methods with appropriate parametrizations, (2) to analyze the (multiple) results, (3) to understand different kinds and origins of uncertainties in these results, and (4) to reason which methods and which parametrizations yield stable results and f...
Most of the existing research on time series concerns supervised forecasting problems. In comparison...
We present an integrated interactive framework for the visual analysis of time-varying multivariate ...
Adaptive and innovative application of classical data mining principles and techniques in time serie...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
Visual analytics for time series data has received a considerable amount of attention. Different app...
Segmenting biologging time series of animals on multiple temporal scales is an essential step that r...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Abstract. An important task in signal processing and temporal data mining is time series segmentatio...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Multi-target classification of multivariate time series data poses a challenge in many real-world ap...
Most of the existing research on multivariate time series concerns supervised forecasting problems. ...
The ultimate goal of any visual analytic task is to make sense of the data and gain insights. Unfort...
Most of the existing research on time series concerns supervised forecasting problems. In comparison...
We present an integrated interactive framework for the visual analysis of time-varying multivariate ...
Adaptive and innovative application of classical data mining principles and techniques in time serie...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
Visual analytics for time series data has received a considerable amount of attention. Different app...
Segmenting biologging time series of animals on multiple temporal scales is an essential step that r...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
Abstract. An important task in signal processing and temporal data mining is time series segmentatio...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Multi-target classification of multivariate time series data poses a challenge in many real-world ap...
Most of the existing research on multivariate time series concerns supervised forecasting problems. ...
The ultimate goal of any visual analytic task is to make sense of the data and gain insights. Unfort...
Most of the existing research on time series concerns supervised forecasting problems. In comparison...
We present an integrated interactive framework for the visual analysis of time-varying multivariate ...
Adaptive and innovative application of classical data mining principles and techniques in time serie...