In risk assessment applications well informed decisions are made based on huge amounts of multi-dimensional data. In many domains not only the risk of a wrong decision, but in particular the trade-off between the costs of possible decisions are of utmost importance. In this paper we describe a framework tightly integrating interactive visual exploration with machine learning to support the decision making process. The proposed approach uses a series of interactive 2D visualizations of numeric and ordinal data combined with visualization of classification models. These series of visual elements are further linked to the classifier's performance visualized using an interactive performance curve. An interactive decision point on the performanc...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergen...
This thesis investigates how to assist an expert in decision making based on the exploration of clas...
Classification and categorization are common tasks in data mining and knowledge discovery. Visualiza...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
AbstractThis paper proposes a scheme called Augmented Model Visualization for Data Mining (AMV-DM), ...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Visualization has become an essential support throughout the KDD process in order to extract hidden ...
Developing categories for health data is a crucial step for health researchers to explore, analyze, ...
Metrics seeking to predict financial risk-taking behaviors typically exhibit limited validity. This ...
Metrics seeking to predict financial risk-taking behaviors typically exhibit limited validity. This ...
Abstract Visualizations—visual representations of information, depicted in graphics—are studied by r...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergen...
This thesis investigates how to assist an expert in decision making based on the exploration of clas...
Classification and categorization are common tasks in data mining and knowledge discovery. Visualiza...
The derivation, manipulation and verification of analytical models from raw data is a process which ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
Visual analytics enables the coupling of machine learning models and humans in a tightly integrated ...
AbstractThis paper proposes a scheme called Augmented Model Visualization for Data Mining (AMV-DM), ...
A machine learning classifier is a program that, given an object, outputs a label indicating its cla...
Visualization has become an essential support throughout the KDD process in order to extract hidden ...
Developing categories for health data is a crucial step for health researchers to explore, analyze, ...
Metrics seeking to predict financial risk-taking behaviors typically exhibit limited validity. This ...
Metrics seeking to predict financial risk-taking behaviors typically exhibit limited validity. This ...
Abstract Visualizations—visual representations of information, depicted in graphics—are studied by r...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
Decision making is a complex process consisting of several consecutive steps. Before converting a de...
The increasing trend of systematic collection of medical data (diagnoses, hospital admission emergen...