This volume is largely about nontraditional data; this paper is about a nontraditional visualization: classification trees. Using trees with data will be new to many students, so rather than beginning with a computer algorithm that produces optimal trees, we suggest that students first construct their own trees, one node at a time, to explore how they work, and how well. This build-it-yourself process is more transparent than using algorithms such as CART; we believe it will help students not only understand the fundamentals of trees, but also better understand tree-building algorithms when they do encounter them. And because classification is an important task in machine learning, a good foundation in trees can prepare students to better u...
In the forestry industry tree trunks are currently classified manually. The object of this thesis is...
The traditional approach to representing tree structures is as a rooted, directed graph with the roo...
Summarization: Classification is an important problem in data mining. A number of popular classifier...
The training objectives of the learning object are: 1) To define a classification tree; and 2) To ap...
Nineth post of our series on classification from scratch. Today, we'll see the heuristics of the alg...
In the field of machine learning there are several knowledge representation techniques, for example ...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
Induced decision trees are an extensively-researched solution to classification tasks. For many prac...
Summarization: Classification is an important problem in data mining. Given a database of records, e...
Representations are a critical way to communicate scientific knowledge. Systematists biologists are ...
Classification and regression tree (CART) is a non-parametric methodology that was introduced first ...
In the forestry industry tree trunks are currently classified manually. The object of this thesis is...
The traditional approach to representing tree structures is as a rooted, directed graph with the roo...
Summarization: Classification is an important problem in data mining. A number of popular classifier...
The training objectives of the learning object are: 1) To define a classification tree; and 2) To ap...
Nineth post of our series on classification from scratch. Today, we'll see the heuristics of the alg...
In the field of machine learning there are several knowledge representation techniques, for example ...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Decision trees are commonly used for classification. We propose to use decision trees not just for c...
The methodology used to construct tree structured rules is the focus of this monograph. Unlike many ...
<p>Classification And Regression Trees (CART) are binary decision trees, attempting to classify a pa...
Induced decision trees are an extensively-researched solution to classification tasks. For many prac...
Summarization: Classification is an important problem in data mining. Given a database of records, e...
Representations are a critical way to communicate scientific knowledge. Systematists biologists are ...
Classification and regression tree (CART) is a non-parametric methodology that was introduced first ...
In the forestry industry tree trunks are currently classified manually. The object of this thesis is...
The traditional approach to representing tree structures is as a rooted, directed graph with the roo...
Summarization: Classification is an important problem in data mining. A number of popular classifier...