As technology evolves and electronic devices become widespread, the amount of data produced in the form of stream increases in enormous proportions. Data streams are an online source of data, meaning that it keeps producing data continuously. This creates the need for fast and reliable methods to analyse and extract information from these sources. Stream mining algorithms exist for this purpose, but the use of supervised machine learning is extremely limited in the stream domain since it is unfeasible to label every data instance requested to be processed. Tackling this problem, our paper proposes the use of active learning techniques for stream mining algorithms, specifically incremental Hoeffding trees-based. It is important to mention th...
The update process of clustering-based data stream classifiers generates clusters from partially or ...
Data stream classification has drawn increasing attention from the data mining community in recent y...
Nowadays real-time industrial applications are generating a huge amount of data continuously every d...
Data labeling is an expensive and time-consuming task. Choosing which labels to use is increasingly ...
In this paper, we propose a new research problem on active learning from data streams where data vol...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
In this position paper we introduce Active In-ference, a paradigm for intelligently request-ing huma...
Decision tree classiers are a widely used tool in data stream mining. The use of condence intervals ...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
International audienceThis paper addresses stream-based active learning for classification. We propo...
With the exponential growth of data amount and sources, access to large collections of data has beco...
Data stream analysis is growing in popularity in the last years since several application domains re...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
Data streams classification is an important problem however, poses many challenges. Since the length...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
The update process of clustering-based data stream classifiers generates clusters from partially or ...
Data stream classification has drawn increasing attention from the data mining community in recent y...
Nowadays real-time industrial applications are generating a huge amount of data continuously every d...
Data labeling is an expensive and time-consuming task. Choosing which labels to use is increasingly ...
In this paper, we propose a new research problem on active learning from data streams where data vol...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
In this position paper we introduce Active In-ference, a paradigm for intelligently request-ing huma...
Decision tree classiers are a widely used tool in data stream mining. The use of condence intervals ...
This paper presents a new learning algorithm for inducing decision trees from data streams. In thes...
International audienceThis paper addresses stream-based active learning for classification. We propo...
With the exponential growth of data amount and sources, access to large collections of data has beco...
Data stream analysis is growing in popularity in the last years since several application domains re...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
Data streams classification is an important problem however, poses many challenges. Since the length...
The classification of data streams is an interesting but also a challenging problem. A data stream m...
The update process of clustering-based data stream classifiers generates clusters from partially or ...
Data stream classification has drawn increasing attention from the data mining community in recent y...
Nowadays real-time industrial applications are generating a huge amount of data continuously every d...