2nd CFP:
Workshop on
Incremental classification and clustering, concept drift, novelty detection, active learning in big/fast data context
(IncrLearn)
https://incrlearn.sciencesconf.org/
In conjunction with
22st IEEE International Conference on Data Mining (ICDM 2022)
Title: Incremental classification and clustering, concept drift, novelty detection, active learning in big/fast data context
Description:
The development of dynamic information analysis methods, like incremental classification/clustering, concept drift management novelty detection techniques and active learning is becoming a central concern in a bunch of applications whose main goal is to deal with information which is varying over time or with information flows that can oversize memory storage or computation capacity. These applications relate themselves to very various and highly strategic domains, including web mining, social network analysis, adaptive information retrieval, anomaly or intrusion detection, process control and management recommender systems, technological and scientific survey, and even genomic information analysis, in bioinformatics.
The term incremental is often associated to the terms evolutionary, adaptive, interactive, on-line, or batch. Most of the learning methods were initially defined in a non-incremental way. However, in each of these families, were initiated incremental methods making it possible to consider the temporal component of a data flow or to achieve learning on huge/fast datasets in a tractable way. In a more general way incremental classification/clustering algorithms and novelty detection approaches are subjected to the following constraints:
1. Potential changes in the data description space must be considered;
2. Possibility to be applied without knowing as a preliminary all the data to be analyzed;
3. Taking into account of a new data must be carried out without making intensive use of the already considered data;
4. Result must but available after insertion of all new data.
The above-mentioned constraints clearly follow the VVV (Volume-Velocity and Variety) rule and thus directly fit with big/fast data context.
This workshop aims to offer a meeting opportunity for academics and industry-related researchers, belonging to the various communities of Computational Intelligence, Machine Learning, Experimental Design, Data Mining and Big/Fast Data Management to discuss new areas of incremental classification, concept drift management and novelty detection and on their application to analysis of time varying information and huge dataset of various natures. Another important aim
of the workshop is to bridge the gap between data acquisition or experimentation and model building.
Through an exhaustive coverage of the incremental learning area workshop will provide fruitful exchanges between plenaries, contributors and workshop attendees. The emerging big/fast data context will be taken into consideration in the workshop.
The set of proposed incremental techniques includes, but is not limited to:
Novelty detection algorithms and techniques
Semi-supervised and active learning approaches
Adaptive hierarchical, k-means or density-based methods
Adaptive neural methods and associated Hebbian learning techniques
Incremental deep learning
Multiview diachronic approaches
Probabilistic approaches
Distributed approaches
Graph partitioning methods and incremental clustering approaches based on attributed graphs
Incremental clustering approaches based on swarm intelligence and genetic algorithms
Evolving classifier ensemble techniques
Incremental classification methods and incremental classifier evaluation
Dynamic feature selection techniques
Clustering of time series
Learning on data streams
Visualization methods for evolving data analysis results
The list of application domain includes, but it is not limited to:
Evolving textual information analysis
Evolving social network analysis
Dynamic process control and tracking
Intrusion and anomaly detection
Genomics and DNA micro-array data analysis
Adaptive recommender and filtering systems
Scientometrics, webometrics and technological survey
Incremental learning in LPWAN and IoT context
Important dates:
Paper submission: September 2, 2022
Notification of acceptance: September 23, 2022
Camera-ready: October 1, 2022
ICDM 2022 Conference: November 30, 2022
Submission Guidelines:
Follow the regular submission guidelines of ICDM 2022 (https://www.wi-lab.com/cyberchair/2022/icdm22/scripts/submit.php?subarea=DM)
Paper will be triple blind reviewed. The accepted papers will appear in ICDM workshops proceedings.
Pascal Cuxac
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Responsable Service Text & Data Mining
INIST-CNRS
2, rue Jean Zay
CS 10310
54519 Vandoeuvre lθs Nancy
France
+33 (0)3 83 50 46 00
https://www.researchgate.net/profile/Pascal_Cuxac
https://sites.google.com/view/pascalcuxac
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