In the era of big data, considerable research focus is being put on designing efficient algorithms capable of learning and extracting high-level knowledge from ubiquitous data streams in an online fashion. While, most existing algorithms assume that data samples are drawn from a stationary distribution, several complex environments deal with data streams that are subject to change over time. Taking this aspect into consideration is an important step towards building truly aware and intelligent systems. In this paper, we propose GNG-A, an adaptive method for incremental unsupervised learning from evolving data streams experiencing various types of change. The proposed method maintains a continuously updated network (graph) of neurons by exte...
A new adaptive anomaly detection framework, based on the use of unsupervised evolving connectionist ...
Research in the field of ambient intelligence allows for the utilisation of different computational ...
Detecting change in evolving data streams is a central issue for accurate adaptive learning. In real...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
Anomaly detection is still a challenging task for video surveillance due to complex environments and...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
Conventional data mining deals with static data stored on disk, for example, using the current state...
Streaming data from different kinds of sensors contributes to Big Data in a significant way. Recogni...
International audienceWe propose an unsupervised online learning method based on the "growing neural...
Novelty detection is a machine learning technique which identifies new or unknown information in dat...
In our digital universe nowadays, enormous amount of data are produced in a streaming manner in a va...
Many crowdsensing applications today rely on learning algorithms applied to data streams to accurate...
Novelty detection is a machine learning technique which identifies new or unknown information in dat...
A data stream is a flow of unbounded data that arrives continuously at high speed. In a dynamic stre...
In many cases, databases are in constant evolution, new data is arriving continuously. Data streams ...
A new adaptive anomaly detection framework, based on the use of unsupervised evolving connectionist ...
Research in the field of ambient intelligence allows for the utilisation of different computational ...
Detecting change in evolving data streams is a central issue for accurate adaptive learning. In real...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
Anomaly detection is still a challenging task for video surveillance due to complex environments and...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
Conventional data mining deals with static data stored on disk, for example, using the current state...
Streaming data from different kinds of sensors contributes to Big Data in a significant way. Recogni...
International audienceWe propose an unsupervised online learning method based on the "growing neural...
Novelty detection is a machine learning technique which identifies new or unknown information in dat...
In our digital universe nowadays, enormous amount of data are produced in a streaming manner in a va...
Many crowdsensing applications today rely on learning algorithms applied to data streams to accurate...
Novelty detection is a machine learning technique which identifies new or unknown information in dat...
A data stream is a flow of unbounded data that arrives continuously at high speed. In a dynamic stre...
In many cases, databases are in constant evolution, new data is arriving continuously. Data streams ...
A new adaptive anomaly detection framework, based on the use of unsupervised evolving connectionist ...
Research in the field of ambient intelligence allows for the utilisation of different computational ...
Detecting change in evolving data streams is a central issue for accurate adaptive learning. In real...