Datastream analysis aims at extracting discriminative information for classification from continuously incoming samples. It is extremely challenging to detect novel data while incrementally updating the model efficiently and stably, especially for high-dimensional and/or large-scale data streams. This paper proposes an efficient framework for novelty detection and incremental learning for unlabeled chunk data streams. First, an accurate factorization-free kernel discriminative analysis (FKDA-X) is put forward through solving a linear system in the kernel space. FKDA-X produces a Reproducing Kernel Hilbert Space (RKHS), in which unlabeled chunk data can be detected and classified by multiple known-classes in a single decision model with a de...
Data stream mining is an emergent research area that investigates knowledge extraction from large am...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
In this paper, we present an efficient novel method for mining discriminative itemsets over data str...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
This paper presents a constructive method for deriving an updated discriminant eigenspace for classi...
Abstract—Kernel-based algorithms such as support vector ma-chines have achieved considerable success...
Abstract—This paper presents a constructive method for de-riving an updated discriminant eigenspace ...
Detecting samples from previously unknown classes is a crucial task in object recognition, especiall...
This paper presents a single pass algorithm for mining discriminative Itemsets in data streams using...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
Novelty detection in data stream mining denotes the identification of new or unknown situations in a...
known object categories Given: a labeled dataset of images with objects from a fixed number of diffe...
Two critical challenges typically associated with mining data streams are concept drift and data con...
In this study, we propose a new approach for novelty detection that uses kernel dependence technique...
Video-based surveillance and security become extremely important in the new, 21st century for human ...
Data stream mining is an emergent research area that investigates knowledge extraction from large am...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
In this paper, we present an efficient novel method for mining discriminative itemsets over data str...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
This paper presents a constructive method for deriving an updated discriminant eigenspace for classi...
Abstract—Kernel-based algorithms such as support vector ma-chines have achieved considerable success...
Abstract—This paper presents a constructive method for de-riving an updated discriminant eigenspace ...
Detecting samples from previously unknown classes is a crucial task in object recognition, especiall...
This paper presents a single pass algorithm for mining discriminative Itemsets in data streams using...
In the era of big data, considerable research focus is being put on designing efficient algorithms c...
Novelty detection in data stream mining denotes the identification of new or unknown situations in a...
known object categories Given: a labeled dataset of images with objects from a fixed number of diffe...
Two critical challenges typically associated with mining data streams are concept drift and data con...
In this study, we propose a new approach for novelty detection that uses kernel dependence technique...
Video-based surveillance and security become extremely important in the new, 21st century for human ...
Data stream mining is an emergent research area that investigates knowledge extraction from large am...
Existing Data Stream Mining algorithms assume the availability of labelled and balanced data streams...
In this paper, we present an efficient novel method for mining discriminative itemsets over data str...