Nowadays huge volumes of data are produced in the form of fast streams, which are further affected by non-stationary phenomena. The resulting lack of stationarity in the distribution of the produced data calls for efficient and scalable algorithms for online analysis capable of adapting to such changes (concept drift). The online learning field has lately turned its focus on this challenging scenario, by designing incremental learning algorithms that avoid becoming obsolete after a concept drift occurs. Despite the noted activity in the literature, a need for new efficient and scalable algorithms that adapt to the drift still prevails as a research topic deserving further effort. Surprisingly, Spiking Neural Networks, one of the major expon...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Straat M, Abadi F, Göpfert C, Hammer B, Biehl M. Statistical Mechanics of On-Line Learning Under Con...
Applications that generate huge amounts of data in the form of fast streams are becoming increasingl...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
This thesis focuses on the development of new batch/online learning algorithms for evolving spiking ...
Concept drift primarily refers to an online supervised learning scenario when the relation between ...
The big data paradigm has posed new challenges for the Machine Learning algorithms, such as analysin...
In online learning, each training example is processed separately and then discarded. Environments t...
Most information sources in the current technological world are generating data sequentially and rap...
Abstract — Various types of online learning algorithms have been developed so far to handle concept ...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
With recent advances in learning algorithms, recurrent networks of spiking neurons are achieving per...
In our digital universe nowadays, enormous amount of data are produced in a streaming manner in a va...
University of Technology Sydney. Faculty of Engineering and Information Technology.The term concept ...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Straat M, Abadi F, Göpfert C, Hammer B, Biehl M. Statistical Mechanics of On-Line Learning Under Con...
Applications that generate huge amounts of data in the form of fast streams are becoming increasingl...
153 p.Applications that generate data in the form of fast streams from non-stationary environments, ...
This thesis focuses on the development of new batch/online learning algorithms for evolving spiking ...
Concept drift primarily refers to an online supervised learning scenario when the relation between ...
The big data paradigm has posed new challenges for the Machine Learning algorithms, such as analysin...
In online learning, each training example is processed separately and then discarded. Environments t...
Most information sources in the current technological world are generating data sequentially and rap...
Abstract — Various types of online learning algorithms have been developed so far to handle concept ...
Machine learning applications in streaming data often grapple with dynamic changes in data distribut...
With recent advances in learning algorithms, recurrent networks of spiking neurons are achieving per...
In our digital universe nowadays, enormous amount of data are produced in a streaming manner in a va...
University of Technology Sydney. Faculty of Engineering and Information Technology.The term concept ...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
Due to potentially large number of applications of real-time data stream mining in scientific and bu...
Straat M, Abadi F, Göpfert C, Hammer B, Biehl M. Statistical Mechanics of On-Line Learning Under Con...