The labeling of data sets is a time-consuming task, which is, however, an important prerequisite for machine learning and visual analytics. Visual-interactive labeling (VIAL) provides users an active role in the process of labeling, with the goal to combine the potentials of humans and machines to make labeling more efficient. Recent experiments showed that users apply different strategies when selecting instances for labeling with visual-interactive interfaces. In this paper, we contribute a systematic quantitative analysis of such user strategies. We identify computational building blocks of user strategies, formalize them, and investigate their potentials for different machine learning tasks in systematic experiments. The core insights o...
Visual analytics and interactive machine learning both try to leverage the complementary strengths o...
Strategies for selecting the next data instance to label, in service of generating labeled data for ...
Supervised machine learning techniques require labelled multivariate training datasets. Many approac...
The labeling of data sets is a time-consuming task, which is, however, an important prerequisite for...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
The assignment of labels to data instances is a fundamental prerequisite for many machine learning t...
Active learning has been proven a reliable strategy to reduce manual efforts in training data labeli...
Assigning labels to data instances is a prerequisite for many machine learning tasks. Similarly, lab...
Active learning aims to label the most informative data points in order to minimize the cost of lab...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
Methods from supervised machine learning allow the classification of new data automatically and are ...
In interactive machine learning, human users and learning algorithms work together in order to solve...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Visualisations can be used to provide developers with insights into the inner workings of interactiv...
Visual analytics and interactive machine learning both try to leverage the complementary strengths o...
Strategies for selecting the next data instance to label, in service of generating labeled data for ...
Supervised machine learning techniques require labelled multivariate training datasets. Many approac...
The labeling of data sets is a time-consuming task, which is, however, an important prerequisite for...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
The assignment of labels to data instances is a fundamental prerequisite for many machine learning t...
Active learning has been proven a reliable strategy to reduce manual efforts in training data labeli...
Assigning labels to data instances is a prerequisite for many machine learning tasks. Similarly, lab...
Active learning aims to label the most informative data points in order to minimize the cost of lab...
Recent advances in visual analytics have enabled us to learn from user interactions and uncover anal...
Methods from supervised machine learning allow the classification of new data automatically and are ...
In interactive machine learning, human users and learning algorithms work together in order to solve...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Visualisations can be used to provide developers with insights into the inner workings of interactiv...
Visual analytics and interactive machine learning both try to leverage the complementary strengths o...
Strategies for selecting the next data instance to label, in service of generating labeled data for ...
Supervised machine learning techniques require labelled multivariate training datasets. Many approac...