Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems from updating sufficient statistics, only addressing growth when decisions can be made that are guaranteed to be almost identical to those that would be made by conventional batch learning methods. Despite this guarantee, decisions are still subject to limited lookahead and stability issues. In this paper we explore Hoeffding Option Trees, a regular Hoeffding tree containing additional option nodes that allow several tests to be applied, leading to multiple Hoeffding trees as separate paths. We show how to control tree growth in order to generate a mixture of paths, and empirically determine a reasonable number of paths. We then empirically ev...
State-of-the-art machine learning solutions mainly focus on creating highly accurate models without ...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems f...
Many organizations today have more than very large databases. The databases also grow without limit ...
Modern information technology allows information to be collected at a far greater rate than ever bef...
A thorough examination of the performance of Hoeffding trees, state-of-the-art in classification for...
The success of simple methods for classification shows that is is often not necessary to model compl...
Hoeffding trees are state-of-the-art in classification for data streams. They perform prediction by ...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
The success of simple methods for classification shows that is is often not necessary to model compl...
This paper presents an hybrid adaptive system for induction of forest of trees from data streams. Th...
We describe an experimental study of Op-tion Decision Trees with majority votes. Op-tion Decision Tr...
This paper presents a system for induction of forest of functional trees from data streams able to d...
We propose two new improvements for bagging methods on evolving data streams. Recently, two new vari...
State-of-the-art machine learning solutions mainly focus on creating highly accurate models without ...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems f...
Many organizations today have more than very large databases. The databases also grow without limit ...
Modern information technology allows information to be collected at a far greater rate than ever bef...
A thorough examination of the performance of Hoeffding trees, state-of-the-art in classification for...
The success of simple methods for classification shows that is is often not necessary to model compl...
Hoeffding trees are state-of-the-art in classification for data streams. They perform prediction by ...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
The success of simple methods for classification shows that is is often not necessary to model compl...
This paper presents an hybrid adaptive system for induction of forest of trees from data streams. Th...
We describe an experimental study of Op-tion Decision Trees with majority votes. Op-tion Decision Tr...
This paper presents a system for induction of forest of functional trees from data streams able to d...
We propose two new improvements for bagging methods on evolving data streams. Recently, two new vari...
State-of-the-art machine learning solutions mainly focus on creating highly accurate models without ...
This thesis investigates the problem of growing decision trees from data, for the purposes of classi...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...