Visual analytics enables the coupling of machine learning models and humans in a tightly integrated workflow, addressing various analysis tasks. Each task poses distinct demands to analysts and decision-makers. In this survey, we focus on one canonical technique for rule-based classification, namely decision tree classifiers. We provide an overview of available visualizations for decision trees with a focus on how visualizations differ with respect to 16 tasks. Further, we investigate the types of visual designs employed, and the quality measures presented. We find that (i) interactive visual analytics systems for classifier development offer a variety of visual designs, (ii) utilization tasks are sparsely covered, (iii) beyond classifier d...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Decision tree induction is certainly among the most applicable learning techniques due to its power ...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Abstract—Researchers in machine learning use decision trees, production rules, and decision graphs f...
Researchers in machine learning use decision trees, production rules, and decision graphs for visual...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
In this work, we present a study that traces the technical and cognitive processes in two visual ana...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
A lot of decision systems work internally using different forms of decision rules. In our experiment...
We present a system for the interactive construction and analysis of decision trees that enables dom...
Data mining (DM) modeling is a process of transforming information enfolded in a dataset into a form...
The aim of many machine learning users is to comprehend the structures that are inferred from a data...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Decision tree induction is certainly among the most applicable learning techniques due to its power ...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Abstract—Researchers in machine learning use decision trees, production rules, and decision graphs f...
Researchers in machine learning use decision trees, production rules, and decision graphs for visual...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
In this work, we present a study that traces the technical and cognitive processes in two visual ana...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
A lot of decision systems work internally using different forms of decision rules. In our experiment...
We present a system for the interactive construction and analysis of decision trees that enables dom...
Data mining (DM) modeling is a process of transforming information enfolded in a dataset into a form...
The aim of many machine learning users is to comprehend the structures that are inferred from a data...
Business users and analysts commonly use spread-sheets and 2D plots to analyze and understand their ...
Decision tree induction is certainly among the most applicable learning techniques due to its power ...
Classification is a common task in data mining and knowledge discovery. Usually classifiers have to ...