The ultimate goal of any visual analytic task is to make sense of the data and gain insights. Unfortunately, the continuously growing scale of the data nowadays challenges the traditional data analytics in the ”big-data ” era. Particularly, the human cognitive capabili-ties are constant whereas the data scale is not. Furthermore, most existing work focus on how to extract interesting information and present that to the user while not emphasizing on how to provide options to the analysts if the extracted information is not interest-ing. In this paper, we propose a visual analytic tool called MaVis that integrates multiple machine learning models with a plug-and-play style to describe the input data. It allows the analysts to choose the way t...
Choosing appropriate time series segmentation algorithms and relevant parameter values is a challeng...
Visual analytics has been widely studied in the past decade both in academia and industry to improve...
Multi-target classification of multivariate time series data poses a challenge in many real-world ap...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Visual analytics for time series data has received a considerable amount of attention. Different app...
We present an integrated interactive framework for the visual analysis of time-varying multivariate ...
AbstractVisual analytics (VA) provides an interactive way to explore vast amounts of data and find i...
The increasing availability of digital data provide both opportunities and challenges to analysts an...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Visual analytics systems combine machine learning or other analytic techniques with interactive data...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Predictive analysis is an important part of data analysis. Predictive models, based on Statistics or...
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 has been widely studied in the past decade both in academia and industry to improve...
Multi-target classification of multivariate time series data poses a challenge in many real-world ap...
In recent years, data analysts have been confronted by increasing amounts of data, often in the form...
To support analysis and modelling of large amounts of spatio-temporal data having the form of spatia...
As data sources become larger and more complex, the ability to effectively explore and analyze patte...
Visual analytics for time series data has received a considerable amount of attention. Different app...
We present an integrated interactive framework for the visual analysis of time-varying multivariate ...
AbstractVisual analytics (VA) provides an interactive way to explore vast amounts of data and find i...
The increasing availability of digital data provide both opportunities and challenges to analysts an...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Visual analytics systems combine machine learning or other analytic techniques with interactive data...
Segmentation and labeling of different activities in multivariate time series data is an important t...
Predictive analysis is an important part of data analysis. Predictive models, based on Statistics or...
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 has been widely studied in the past decade both in academia and industry to improve...
Multi-target classification of multivariate time series data poses a challenge in many real-world ap...