Online learning: A comprehensive survey
Online learning represents a family of machine learning methods, where a learner attempts
to tackle some predictive (or any type of decision-making) task by learning from a sequence …
to tackle some predictive (or any type of decision-making) task by learning from a sequence …
Data stream analysis: Foundations, major tasks and tools
The significant growth of interconnected Internet‐of‐Things (IoT) devices, the use of social
networks, along with the evolution of technology in different domains, lead to a rise in the …
networks, along with the evolution of technology in different domains, lead to a rise in the …
Memory efficient experience replay for streaming learning
In supervised machine learning, an agent is typically trained once and then deployed. While
this works well for static settings, robots often operate in changing environments and must …
this works well for static settings, robots often operate in changing environments and must …
Data stream clustering: A survey
Data stream mining is an active research area that has recently emerged to discover
knowledge from large amounts of continuously generated data. In this context, several data …
knowledge from large amounts of continuously generated data. In this context, several data …
Moa: Massive online analysis, a framework for stream classification and clustering
Abstract Massive Online Analysis (MOA) is a software environment for implementing
algorithms and running experiments for online learning from evolving data streams. MOA is …
algorithms and running experiments for online learning from evolving data streams. MOA is …
A survey on data stream clustering and classification
Nowadays, with the advance of technology, many applications generate huge amounts of
data streams at very high speed. Examples include network traffic, web click streams, video …
data streams at very high speed. Examples include network traffic, web click streams, video …
On density-based data streams clustering algorithms: A survey
Clustering data streams has drawn lots of attention in the last few years due to their ever-
growing presence. Data streams put additional challenges on clustering such as limited time …
growing presence. Data streams put additional challenges on clustering such as limited time …
Clustering data streams based on shared density between micro-clusters
M Hahsler, M Bolaños - IEEE transactions on knowledge and …, 2016 - ieeexplore.ieee.org
As more and more applications produce streaming data, clustering data streams has
become an important technique for data and knowledge engineering. A typical approach is …
become an important technique for data and knowledge engineering. A typical approach is …
Scalable clustering algorithms for big data: A review
Clustering algorithms have become one of the most critical research areas in multiple
domains, especially data mining. However, with the massive growth of big data applications …
domains, especially data mining. However, with the massive growth of big data applications …
Ant colony stream clustering: A fast density clustering algorithm for dynamic data streams
A data stream is a continuously arriving sequence of data and clustering data streams
requires additional considerations to traditional clustering. A stream is potentially …
requires additional considerations to traditional clustering. A stream is potentially …