Hoeffding trees are state-of-the-art in classification for data streams. They perform prediction by choosing the majority class at each leaf. Their predictive accuracy can be increased by adding Naive Bayes models at the leaves of the trees. By stress-testing these two prediction methods using noise and more complex concepts and an order of magnitude more instances than in previous studies, we discover situations where the Naive Bayes method outperforms the standard Hoeffding tree initially but is eventually overtaken. The reason for this crossover is determined and a hybrid adaptive method is proposed that generally outperforms the two original prediction methods for both simple and complex concepts as well as under noise
This paper presents an hybrid adaptive system for induction of forest of trees from data streams. Th...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
We propose two new improvements for bagging methods on evolving data streams. Recently, two new vari...
Hoeffding trees are state-of-the-art in classification for data streams. They perform prediction by ...
Modern information technology allows information to be collected at a far greater rate than ever bef...
The success of simple methods for classification shows that is is often not necessary to model compl...
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 for processing high-speed data streams. Their ingenuity stems f...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
Machine learning software accounts for a significant amount of energy consumed in data centers. Thes...
Machine learning software accounts for a significant amount of energy consumed in data centers. Thes...
Energy consumption reduction has been an increasing trend in machine learning over the past few year...
The ubiquity of data streams has been encouraging the development of new incremental and adaptive le...
Abstract. A thorough examination of the performance of Hoeding trees, state-of-the-art in classicati...
This paper presents an hybrid adaptive system for induction of forest of trees from data streams. Th...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
We propose two new improvements for bagging methods on evolving data streams. Recently, two new vari...
Hoeffding trees are state-of-the-art in classification for data streams. They perform prediction by ...
Modern information technology allows information to be collected at a far greater rate than ever bef...
The success of simple methods for classification shows that is is often not necessary to model compl...
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 for processing high-speed data streams. Their ingenuity stems f...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
Machine learning software accounts for a significant amount of energy consumed in data centers. Thes...
Machine learning software accounts for a significant amount of energy consumed in data centers. Thes...
Energy consumption reduction has been an increasing trend in machine learning over the past few year...
The ubiquity of data streams has been encouraging the development of new incremental and adaptive le...
Abstract. A thorough examination of the performance of Hoeding trees, state-of-the-art in classicati...
This paper presents an hybrid adaptive system for induction of forest of trees from data streams. Th...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
We propose two new improvements for bagging methods on evolving data streams. Recently, two new vari...