State-of-the-art machine learning solutions mainly focus on creating highly accurate models without constraints on hardware resources. Stream mining algorithms are designed to run on resource-constrained devices, thus a focus on low power and energy and memory-efficient is essential. The Hoeffding tree algorithm is able to create energy-efficient models, but at the cost of less accurate trees in comparison to their ensembles counterpart. Ensembles of Hoeffding trees, on the other hand, create a highly accurate forest of trees but consume five times more energy on average. An extension that tried to obtain similar results to ensembles of Hoeffding trees was the Extremely Fast Decision Tree (EFDT). This paper presents the Green Accelerated Ho...
High-throughput real-time Big Data stream processing requires fast incremental algorithms that keep ...
Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems f...
Big Data streams are being generated in a faster, bigger, and more commonplace. In this scenario, Ho...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
Energy consumption reduction has been an increasing trend in machine learning over the past few year...
Modern information technology allows information to be collected at a far greater rate than ever bef...
The interest in machine learning algorithms is increasing, in parallel with the advancements in hard...
Recently machine learning researchers are designing algorithms that can run in embedded and mobile d...
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...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
Recently machine learning researchers are designing algorithms that can run in embedded and mobile d...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
The success of simple methods for classification shows that is is often not necessary to model compl...
SHAP (SHapley Additive exPlanation) values are one of the leading tools for interpreting machine lea...
High-throughput real-time Big Data stream processing requires fast incremental algorithms that keep ...
Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems f...
Big Data streams are being generated in a faster, bigger, and more commonplace. In this scenario, Ho...
Energy efficiency in machine learning explores how to build machine learning algorithms and models w...
Energy consumption reduction has been an increasing trend in machine learning over the past few year...
Modern information technology allows information to be collected at a far greater rate than ever bef...
The interest in machine learning algorithms is increasing, in parallel with the advancements in hard...
Recently machine learning researchers are designing algorithms that can run in embedded and mobile d...
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...
Mining high speed data streams has become a necessity because of the enormous growth in the volume o...
Recently machine learning researchers are designing algorithms that can run in embedded and mobile d...
Mining of data streams must balance three evaluation dimensions: accuracy, time and memory. Excellen...
The success of simple methods for classification shows that is is often not necessary to model compl...
SHAP (SHapley Additive exPlanation) values are one of the leading tools for interpreting machine lea...
High-throughput real-time Big Data stream processing requires fast incremental algorithms that keep ...
Hoeffding trees are state-of-the-art for processing high-speed data streams. Their ingenuity stems f...
Big Data streams are being generated in a faster, bigger, and more commonplace. In this scenario, Ho...