Most classification methods are based on the assumption that data conforms to a stationary distribution. The machine learning domain currently suffers from a lack of classification techniques that are able to detect the occurrence of a change in the underlying data distribution. Ignoring possible changes in the underlying concept, also known as concept drift, may degrade the per-formance of the classification model. Often these changes make the model inconsistent and regular updatings become necessary. Taking the temporal dimension into account during the analysis of Web usage data is a necessity, since the way a site is visited may indeed evolve due to modifications in the structure and content of the site, or even due to changes in the be...
We introduce a simple and efficient method for clustering and identifying temporal trends in hyper-l...
International audienceExisting Web usage mining techniques are currently based on an arbitrary divis...
ABSTRACT: In this paper an approach that is using evolving, incremental (on-line) clustering to auto...
This research was motivated by problems in network security, where an attacker often deliberately ch...
Abstract- Many applications are driven by evolving data-patterns in web traffic, program execution t...
Data on the Web is noisy, huge, and dynamic. This poses enormous challenges to most data mining tech...
Examining concepts that change over time has been an active area of research within data mining. Thi...
Web usage mining has recently attracted attention as a viable framework for extracting useful access...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
In this paper an approach that is using evolving, incremental (on-line) clustering to automatically ...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
© 2014 IEEE. This paper discusses the problem of clustering data changing over time, a research doma...
Web search query logs contain valuable information which can be utilized for personalization and imp...
We investigate Web surfer behavior prediction by building generative and discrimi-native models on t...
Nowadays, more and more organizations are becoming reliant on the Internet. The Web has become one o...
We introduce a simple and efficient method for clustering and identifying temporal trends in hyper-l...
International audienceExisting Web usage mining techniques are currently based on an arbitrary divis...
ABSTRACT: In this paper an approach that is using evolving, incremental (on-line) clustering to auto...
This research was motivated by problems in network security, where an attacker often deliberately ch...
Abstract- Many applications are driven by evolving data-patterns in web traffic, program execution t...
Data on the Web is noisy, huge, and dynamic. This poses enormous challenges to most data mining tech...
Examining concepts that change over time has been an active area of research within data mining. Thi...
Web usage mining has recently attracted attention as a viable framework for extracting useful access...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
In this paper an approach that is using evolving, incremental (on-line) clustering to automatically ...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
© 2014 IEEE. This paper discusses the problem of clustering data changing over time, a research doma...
Web search query logs contain valuable information which can be utilized for personalization and imp...
We investigate Web surfer behavior prediction by building generative and discrimi-native models on t...
Nowadays, more and more organizations are becoming reliant on the Internet. The Web has become one o...
We introduce a simple and efficient method for clustering and identifying temporal trends in hyper-l...
International audienceExisting Web usage mining techniques are currently based on an arbitrary divis...
ABSTRACT: In this paper an approach that is using evolving, incremental (on-line) clustering to auto...