Comunicació presentada a: 2020 IEEE International Conference on Systems, Man, and Cybernetics (SMC), celebrat del 11 al 14 d'octubre de 2020 a Toronto, Canadà.How can there be Human-In-the-Loop-Learning (HILL) if datasets aimed at building classifiers have ever more dimensions? We make two contributions. First, we examine the few early results on the effectiveness of HILL for building autonomous classifiers and report on our own experiment that validates the merits of HILL. Second, we introduce a HILL system (by using parallel coordinates) for learning of decision tree classifiers (DTCs). DTCs importantly emphasise the relevance of attributes and enable attribute selection, and therefore are appreciated for their transparency. The proposed ...
Visualization of Machine Learning (ML) models is an important part of the ML process to enhance the ...
Robotic applications more and more expand into unstructured terrains. The new applications require d...
International audienceDecision trees are efficient means for building classification models due to t...
Interactive machine learning (IML) enables the incorporation of human expertise because the human pa...
This paper contributes to interpretable machine learning via visual knowledge discovery in parallel ...
Machine learning is now in a state to get major industrial applications. The most important applicat...
This presentation contributes to interpretable machine learning via visual knowledge discovery in ge...
We present the parallelized implementation of decision forest training as used in Kinect to train th...
Automation has arrived to Parallel Coordinates. A geometrically motivated classifier is presented an...
Abstract. In the fields of data mining and machine learning the amount of data available for buildin...
This paper describes the use of the C4.5 decision tree learning algorithm in the design of a classif...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
Decision Trees (DTs) are widely used Machine Learning (ML) models with a broad range of appli- catio...
A new class of data structures called “bumptrees ” is described. These structures are useful for eff...
Classifiers can be either linear means Naive Bayes classifier or non-linear means decision trees.In ...
Visualization of Machine Learning (ML) models is an important part of the ML process to enhance the ...
Robotic applications more and more expand into unstructured terrains. The new applications require d...
International audienceDecision trees are efficient means for building classification models due to t...
Interactive machine learning (IML) enables the incorporation of human expertise because the human pa...
This paper contributes to interpretable machine learning via visual knowledge discovery in parallel ...
Machine learning is now in a state to get major industrial applications. The most important applicat...
This presentation contributes to interpretable machine learning via visual knowledge discovery in ge...
We present the parallelized implementation of decision forest training as used in Kinect to train th...
Automation has arrived to Parallel Coordinates. A geometrically motivated classifier is presented an...
Abstract. In the fields of data mining and machine learning the amount of data available for buildin...
This paper describes the use of the C4.5 decision tree learning algorithm in the design of a classif...
This article describes a new system for induction of oblique decision trees. This system, OC1, combi...
Decision Trees (DTs) are widely used Machine Learning (ML) models with a broad range of appli- catio...
A new class of data structures called “bumptrees ” is described. These structures are useful for eff...
Classifiers can be either linear means Naive Bayes classifier or non-linear means decision trees.In ...
Visualization of Machine Learning (ML) models is an important part of the ML process to enhance the ...
Robotic applications more and more expand into unstructured terrains. The new applications require d...
International audienceDecision trees are efficient means for building classification models due to t...