International audienceWe propose an unsupervised online learning method based on the "growing neural gas" algorithm (GNG), for a data-stream configuration where each incoming data is visited only once and used to incrementally update the learned model as soon as it is available. The method maintains a model as a dynamically evolving graph topology of data-representatives that we call neurons. Unlike usual incremental learning methods, it avoids the sensitivity to initialization parameters by using an adaptive parameter-free distance threshold to produce new neurons. Moreover, the proposed method performs a merging process which uses a distance-based probabilistic criterion to eventually merge neurons. This allows the algorithm to preserve a...
Losing V, Hammer B, Wersing H. Choosing the Best Algorithm for an Incremental On-line Learning Task....
Nowadays huge volumes of data are produced in the form of fast streams, which are further affected b...
International audienceAnalog and evolving recurrent neural networks are super-Turing powerful. Here,...
International audienceUsually, incremental algorithms for data streams clustering not only suffer fr...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
International audienceIncremental learning refers to learning from streaming data, which arrive over...
Le travail de recherche exposé dans cette thèse concerne le développement d'approches à base de grow...
Applications that generate huge amounts of data in the form of fast streams are becoming increasingl...
Beyer O, Cimiano P. Online labelling strategies for growing neural gas. In: Yin H, ed. Intelligent D...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
This paper aims to address the ability of self-organizing neural network models to manage real-time ...
Panzner M, Beyer O, Cimiano P. Human Activity Classification with Online Growing Neural Gas. In: Wo...
Kortkamp M, Wachsmuth S. Continuous Visual Codebooks with a Limited Branching Tree Growing Neural Ga...
AbstractIn recent years, the data stream clustering problem has gained considerable attention in the...
Losing V, Hammer B, Wersing H. Choosing the Best Algorithm for an Incremental On-line Learning Task....
Nowadays huge volumes of data are produced in the form of fast streams, which are further affected b...
International audienceAnalog and evolving recurrent neural networks are super-Turing powerful. Here,...
International audienceUsually, incremental algorithms for data streams clustering not only suffer fr...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
International audienceIncremental learning refers to learning from streaming data, which arrive over...
Le travail de recherche exposé dans cette thèse concerne le développement d'approches à base de grow...
Applications that generate huge amounts of data in the form of fast streams are becoming increasingl...
Beyer O, Cimiano P. Online labelling strategies for growing neural gas. In: Yin H, ed. Intelligent D...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
Proceeding of: 2013 IEEE Congress on Evolutionary Computation (CEC), Cancun, 20-23 June 2013Learning...
This paper aims to address the ability of self-organizing neural network models to manage real-time ...
Panzner M, Beyer O, Cimiano P. Human Activity Classification with Online Growing Neural Gas. In: Wo...
Kortkamp M, Wachsmuth S. Continuous Visual Codebooks with a Limited Branching Tree Growing Neural Ga...
AbstractIn recent years, the data stream clustering problem has gained considerable attention in the...
Losing V, Hammer B, Wersing H. Choosing the Best Algorithm for an Incremental On-line Learning Task....
Nowadays huge volumes of data are produced in the form of fast streams, which are further affected b...
International audienceAnalog and evolving recurrent neural networks are super-Turing powerful. Here,...