The aim of many machine learning users is to comprehend the structures that are inferred from a dataset, and such users may be far more interested in understanding the structure of their data than in predicting the outcome of new test data. Part I of this paper surveys representations based on decision trees, production rules and decision graphs that have been developed and used for machine learning. These representations have differing degrees of expressive power, and particular attention is paid to their comprehensibility for non-specialist users. The graphic form in which a structure is portrayed also has a strong effect on comprehensibility, and Part II of this paper develops knowledge visualization techniques that are particularly appr...
Abstract. Data of different levels of complexity and of ever growing diversity of characteristics ar...
Research in machine learning has become very popular in recent years, with many types of models prop...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
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...
This tutorial discusses some knowledge representation issues in machine learning. The focus is on ma...
Introduction Knowledge representation is a topic poorly discussed in machine learning. However, it ...
This paper provides an extensive overview of the use of knowledge graphs in the context of Explainab...
The increasing use of Machine Learning in people's everyday life raised the need for solutions aimed...
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 ...
In this position paper, we argue that a combination of visualization and verbalization techniques is...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
'Machine Learning' brings together all the state-of-the-art methods for making sense of data. With h...
Abstract. The theoretical novelty of many machine learning methods leading to high performing algori...
Abstract. Data of different levels of complexity and of ever growing diversity of characteristics ar...
Research in machine learning has become very popular in recent years, with many types of models prop...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...
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...
This tutorial discusses some knowledge representation issues in machine learning. The focus is on ma...
Introduction Knowledge representation is a topic poorly discussed in machine learning. However, it ...
This paper provides an extensive overview of the use of knowledge graphs in the context of Explainab...
The increasing use of Machine Learning in people's everyday life raised the need for solutions aimed...
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 ...
In this position paper, we argue that a combination of visualization and verbalization techniques is...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
'Machine Learning' brings together all the state-of-the-art methods for making sense of data. With h...
Abstract. The theoretical novelty of many machine learning methods leading to high performing algori...
Abstract. Data of different levels of complexity and of ever growing diversity of characteristics ar...
Research in machine learning has become very popular in recent years, with many types of models prop...
encompass automatic computing procedures based on logical or binary operations that learn a task fro...